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Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
1	
  
Paper	
  1	
  Exam	
  Sheet	
  
Research	
  Methodology	
  and	
  Statistics	
  
Shivananda	
  R	
  Koteshwar	
  
TITLE:	
  A	
  Study	
  on	
  Pragmatic	
  Approaches	
  and	
  
Quality	
  Initiatives	
  for	
  Enhancing	
  Teachers’	
  
Caliber	
  in	
  	
  
Post	
  Graduate	
  Institutes	
  offering	
  MBA	
  
Programme	
  under	
  Bangalore	
  University	
  
	
  
	
  
Under	
  the	
  Guidance	
  of	
  	
  
	
  
Dr.	
  T.V.	
  Raju	
  
Director,	
  RV	
  Institute	
  of	
  Management,	
  Bangalore	
  
CANARA	
  BANK	
  SCHOOL	
  OF	
  MANAGEMENT	
  STUDIES	
  
BANGALORE	
  UNIVERSITY	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
2	
  
RESEARCH METHODOLOGY
Life cycle of Research.................................. 3
Scientific Research..................................... 3
Research Process........................................ 4
Research Report......................................... 5
Good measurement characteristics........................ 7
Research Problem........................................ 8
Hypothesis.............................................. 8
Case Study............................................. 11
Sampling............................................... 11
Data Preparation Process............................... 12
STATISTICS
	
  
Characteristics of a statistical data.................. 13
Arithmetic Mean........................................ 13
Median................................................. 14
Mode................................................... 14
Standard Deviation and Variance........................ 14
Coefficient of Variation............................... 15
Range and Coefficient of Range......................... 15
Trend Analysis (Straight Line Analysis)................ 15
Standard Normal Curve (SNC)............................ 16
Non parametric test – (χ2) kai2 test ................... 16
ANNOVA – Analysis of Variance.......................... 17
Coefficient of Correlation............................. 20
Regression............................................. 20
Small Sample Test...................................... 21
IMPORTANT QUESTIONS	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
3	
  
Life cycle of Research
• Hypothesis,	
   Prediction,	
   Formulation	
   of	
   question,	
   Sampling,	
  
Experimentation,	
   Observation,	
   Recording,	
   Measurement,	
   Analyzing,	
  
Formulation,	
  Testing,	
  Modification	
  and	
  Conclusion	
  
	
  
Types of Research (PAD DEEA) (ASHE)
• Either	
  based	
  on	
  Intent	
  or	
  based	
  on	
  method	
  
• Intent	
  Based:	
  Pure,	
  Applied,	
  Exploratory,	
  Action,	
  Descriptive,	
  Diagnostic,	
  
Evaluation	
  	
  
• Method	
   Based:	
   Experimental,	
   Analytical/Statistical,	
   Historical,	
  
Survey/Fact	
  Finding	
  	
  	
  
o Pure:	
  Undertaken	
  for	
  the	
  sake	
  of	
  knowledge	
  without	
  any	
  intention	
  
to	
  apply	
  it	
  in	
  practice.	
  Aims	
  at	
  extension	
  of	
  knowledge	
  
o Applied:	
  Problem	
  oriented	
  and	
  action	
  directed.	
  Gives	
  conceptual	
  
clarity	
  	
  
o Exploratory:	
   Formulative	
   Research.	
   Study	
   of	
   an	
   unfamiliar	
  
problem	
   about	
   which	
   the	
   researcher	
   has	
   little	
   or	
   no	
   knowledge.	
  
Usually	
  takes	
  the	
  form	
  of	
  a	
  pilot	
  study	
  
o Descriptive:	
   Fact	
   finding	
   investigation.	
   More	
   specific	
   than	
  
exploratory	
  research.	
  	
  
o Diagnostic:	
   Similar	
   to	
   descriptive	
   but	
   with	
   a	
   different	
   focus.	
  
Directed	
   towards	
   discovering	
   what	
   is	
   happening,	
   why	
   is	
   it	
  
happening	
  and	
  what	
  can	
  be	
  done	
  about	
  
o Evaluation:	
   Type	
   of	
   Applied	
   research.	
   Made	
   for	
   assessing	
   the	
  
effectiveness	
  of	
  social	
  or	
  economic	
  programmes	
  implemented	
  	
  
o Action:	
  It’s	
  a	
  type	
  of	
  evaluation	
  study.	
  It	
  is	
  a	
  concurrent	
  evaluation	
  
of	
   an	
   action	
   programme	
   launched	
   for	
   solving	
   a	
   problem	
   for	
  
improving	
  an	
  existing	
  situation	
  
o Experimental:	
  Assessing	
  the	
  effects	
  of	
  a	
  particular	
  variables	
  on	
  a	
  
phenomenon	
  by	
  keeping	
  the	
  other	
  variables	
  constant	
  or	
  controlled	
  
o Analytical:	
   Known	
   as	
   Statistical	
   Method.	
   System	
   of	
   procedures	
  
and	
  techniques	
  of	
  analysis	
  applied	
  to	
  a	
  quantitative	
  data	
  
o Historical:	
  Study	
  of	
  past	
  records.	
  Tries	
  to	
  discover	
  the	
  trends	
  in	
  
the	
  past	
  
o Survey:	
   Fact	
   finding	
   study.	
   Purpose	
   is	
   to	
   provide	
   information,	
  
explain	
   phenomenon	
   to	
   make	
   comparisons	
   and	
   concerned	
   with	
  
cause	
  and	
  effect	
  relationships	
  	
  
Scientific Research
• A	
   method	
   or	
   procedure	
   consisting	
   of	
   systematic	
   observation,	
  
measurement,	
   and	
   experiment,	
   and	
   the	
   formulation,	
   testing,	
   and	
  
modification	
  of	
  hypotheses”	
  
• Requires	
  replication,	
  external	
  review	
  and	
  data	
  recording	
  &	
  sharing	
  
• The	
  key	
  elements	
  of	
  scientific	
  research	
  (articles	
  of	
  faith)	
  are	
  	
  	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
4	
  
o Ethical	
  neutrality	
  (Eliminate	
  personal	
  opinion)	
  
o Reliance	
  on	
  empirical	
  Evidence	
  	
  
o Use	
  of	
  relevant	
  concept	
  
o Commitment	
  of	
  Objectivity	
  
o Generalization	
  
o Validity	
  &	
  Reliability	
  
o Logical	
  Reasoning	
  process	
  
• Scientific	
  research	
  method	
  is	
  inquiry	
  based	
  on	
  empirical	
  and	
  measurable	
  
evidence	
  subject	
  to	
  specific	
  principles	
  of	
  logic	
  reasoning	
  
• Effective	
  Methodology:	
  Question	
  	
  Observe	
  	
  Hypothesis	
  	
  Prediction	
  
	
  Test	
  	
  Analyze	
  	
  Interpret	
  	
  Publish	
  	
  Retest	
  
Research Process
• Research	
  Area/Theme/Problem/Idea	
  
• Tentative	
  hypothesis	
  
• Literature	
  Review	
  
• Research	
  Title/Topic	
  
• Research	
  Questions	
  
• Research	
  Proposal	
  
o Need	
  for	
  study	
  
o Limitation	
  of	
  Research	
  
o Scope	
  of	
  Research	
  
o Budget	
  
o Responsibilities	
  and	
  Obligations	
  of	
  stake	
  holders	
  
o Place	
  and	
  Period	
  of	
  study	
  
• Research	
  Proposal	
  Approval	
  
• Objectives	
  
• Hypothesis	
  
• Operational	
  definition	
  
• Research	
   Method/	
   Research	
   Design	
   (Type,	
   Purpose,	
   Timeframe,	
   Scope	
  
and	
  environment)	
  
o Research	
  Type	
  
 Experimental,	
  Historical	
  and	
  Inferential	
  Designs	
  
 Exploratory,	
  Descriptive	
  and	
  Causal	
  Designs	
  
 Experimental	
  and	
  Post	
  facto	
  
 Historical	
  method,	
  Case	
  study,	
  Clinical	
  Study	
  
 Sample	
  Surveys,	
  Field	
  studies,	
  Experiments	
  in	
  field	
  settings,	
  
Laboratory	
  experiments	
  
 Exploratory,	
  Descriptive,	
  Experimental	
  studies	
  
 Exploratory,	
  Descriptive,	
  Casual	
  
 Experimental,	
  Quasi-­‐Experimental	
  Designs	
  
 True	
   Experimental,	
   Quasi-­‐Experimental	
   and	
   Non	
  
experimental	
  designs	
  
 Experimental,	
   Pre-­‐Experimental,	
   Quasi-­‐Experimental	
  
designs,	
  Survey	
  Research	
  
o Research	
  question	
  or	
  purpose	
  
o Research	
  timeframe	
  
o Data	
  Collection	
  Design	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
5	
  
 Variables	
  
 Data	
  collection	
  methods	
  
o Sampling	
  Design	
  
 Sample	
  Population	
  and	
  Sampling	
  Size	
  
 Sample	
  Distribution	
  Decision	
  
 Sampling	
  Method/Technique	
  
 Sampling	
  Unit/Frame	
  
o Instrument	
  Development	
  
 Introduction	
  and	
  Instructions	
  for	
  participants	
  
 Target	
  Questions	
  (AIM)	
  
• Administrative	
  Questions	
  
• Investigative	
  questions	
  
• Measurement	
  Questions	
  
 Preliminary	
  Analysis	
  plan	
  
o Pilot	
  testing	
  
• Data	
  collection	
  and	
  preparation	
  
• Data	
  Analysis	
  	
  
o Findings	
  (Testing	
  of	
  hypothesis)	
  
o Interpretation	
  and	
  Conclusions	
  
• Report	
  writing	
  /	
  Research	
  Reporting	
  
	
  
Note:	
   Research	
   type	
   is	
   categorized	
   based	
   on	
   the	
   different	
   perspectives	
   from	
  
which	
  any	
  given	
  study	
  can	
  be	
  viewed.	
  They	
  are:	
  
• The	
  degree	
  of	
  formulation	
  of	
  the	
  problem	
  (Exploratory	
  or	
  Formalized)	
  
• The	
   topical	
   scope-­‐breadth	
   and	
   depth	
   of	
   the	
   study	
   (Case	
   or	
   statistical	
  
study)	
  
• The	
   research	
   environment	
   (Field	
   Setting/Survey	
   or	
   laboratory	
  
experiment)	
  
• The	
  time	
  dimension	
  (one-­‐time	
  or	
  longitudinal)	
  
• The	
  mode	
  of	
  data	
  collection	
  (Observational	
  or	
  survey)	
  
• The	
  nature	
  of	
  relationship	
  among	
  variables	
  (Descriptive	
  or	
  casual)	
  
Research Report
	
  
Broad	
  Divisions	
   Individual	
  Sections	
  
Title	
  of	
  Report	
  
Table	
  of	
  Contents	
  	
  
Preliminary	
  material	
  
Abstract/Synopsis	
  
Introduction	
  
Literature	
  Review	
  
Methodology	
  
Results	
  
Discussion	
  
Conclusion	
  
Body	
  of	
  report	
  
Recommendations	
  
References	
  or	
  Bibliography	
  Supplementary	
  
material	
   Appendices	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
6	
  
Levels of Measurement / Measurement
Scales (NOIR)	
  (ODO)	
  
• Nominal:	
   Consists	
   of	
   assigning	
   numerals	
   or	
   symbols	
   to	
   different	
  
categories	
  of	
  a	
  variable.	
  They	
  are	
  just	
  like	
  labels	
  and	
  have	
  no	
  quantitative	
  
value.	
  E.g.:	
  Male	
  and	
  Female	
  applicants	
  of	
  a	
  MBA	
  program	
  
• Ordinal:	
  Persons	
  or	
  objects	
  are	
  assigned	
  numerals,	
  which	
  indicate	
  ranks	
  
with	
  respect	
  to	
  one	
  or	
  more	
  properties	
  either	
  in	
  ascending	
  or	
  descending	
  
order.	
   E.g.:	
   Ranking	
   of	
   individual	
   based	
   on	
   socio-­‐economic	
   class,	
   which	
  
might	
  be	
  a	
  combination	
  of	
  income,	
  education,	
  occupation	
  and	
  wealth	
  
• Interval:	
   It’s	
   ranking	
   with	
   equality	
   in	
   distance.	
   So	
   it’s	
   not	
   possible	
   to	
  
multiply	
  or	
  divide	
  the	
  numbers	
  on	
  an	
  interval	
  scale.	
  E.g.:	
  The	
  centigrade	
  
temperature	
   gauge.	
   A	
   temperature	
   of	
   50degrees	
   is	
   exactly	
   10	
   degrees	
  
hotter	
  than	
  40	
  degrees	
  and	
  10	
  degrees	
  cooler	
  than	
  60	
  degrees	
  
• Ratio:	
   This	
   has	
   absolute	
   zero	
   point.	
   Since	
   there	
   is	
   natural	
   zero,	
   it	
   is	
  
possible	
  to	
  multiply	
  and	
  divide	
  the	
  numbers	
  on	
  a	
  ratio	
  scale.	
  E.g.:	
  Height,	
  
weight,	
  distance	
  and	
  area	
  
MEASUREMENT	
   ORDER	
   DISTANCE	
   ORIGIN	
   STATISTICAL	
  
TOOL	
  USED	
  
SCALES	
  USED	
  
Nominal	
   NO	
   NO	
   NO	
   None	
   Simple	
  Category,	
  
Multiple	
  choice,	
  
Single	
  Response,	
  
Multiple	
  Choice,	
  
Multiple	
  
response,	
  Graphic	
  
Rating	
  scale	
  
Ordinal	
   YES	
   NO	
   NO	
   Median,	
  Rank	
  
order	
  
correlation	
  
coefficient	
  
Stapel	
  Scale	
  
Interval	
   YES	
   YES	
   NO	
   Standard	
  
Deviation,	
  
Product	
  
Moment	
  
correlation,	
  “t”	
  
tests,	
  “F”	
  tests	
  
Likert	
  scale	
  
summated	
  Rating,	
  
Semantic	
  
Differential	
  Scale,	
  
Numerical	
  Scale,	
  
Multiple	
  rating	
  
list	
  scale,	
  Staple	
  
scale,	
  Graphic	
  
Rating	
  scale	
  
Ratio	
   YES	
   YES	
   YES	
   Standard	
  
Deviation,	
  
Product	
  
Moment	
  
correlation,	
  “t”	
  
tests,	
  “F”	
  tests,	
  
Geometric	
  
Mean,	
  
Coefficient	
  of	
  
variation	
  
Constant	
  sum	
  
scale,	
  Graphic	
  
Rating	
  Scale	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
7	
  
• The	
  measurement	
  scales,	
  commonly	
  used	
  in	
  marketing	
  research,	
  can	
  be	
  
divided	
  based	
  on	
  number	
  of	
  dimensions:	
  	
  
o Comparative	
  and	
  Non	
  comparative	
  scales	
  
 Comparative	
   scales	
   involve	
   the	
   respondent	
   in	
   signaling	
  
where	
   there	
   is	
   a	
   difference	
   between two	
   or	
   more	
  
producers,	
   services,	
   brands	
   or	
   other	
   stimuli.	
   Examples	
   of	
  
such	
   scales	
   include;	
   paired	
   comparison,	
   dollar	
   metric,	
  
unity-­‐sum-­‐gain	
  and	
  line	
  marking	
  scales.	
  	
  
 Non-­‐comparative	
   scales,	
   described	
   in	
   the	
   textbook,	
   are;	
  
continuous	
   rating	
   scales,	
   line-­‐marking	
   scales,	
   itemized	
  
rating	
  scales,	
  semantic	
  differential	
  scales	
  and	
  Likert	
  scales.	
  
o Uni-­‐dimensional	
  Scale	
  and	
  Multi-­‐dimensional	
  scale	
  
o Balanced	
  or	
  unbalanced	
  scale	
  
o Forced	
  or	
  Un	
  forced	
  choice	
  scale	
  
o Simple	
  Category	
  scale	
  (Dichotomous	
  scale),	
  Multiple	
  choice	
  single	
  
response	
   scale	
   and	
   Multiple	
   choice	
   Multiple	
   response	
   scale	
  
(multiple	
  choice	
  scale)	
  
o Likert	
   scale	
   (Summated	
   rating	
   scale)	
   and	
   Semantic	
   Differential	
  
Scale	
  (SD	
  Scale)	
  
SCALE	
   MEASUREMENT	
  
Simple	
  Category	
  Scale	
   Nominal	
  
Multiple	
  Choice	
  Single	
  Response	
  Scale	
   Nominal	
  
Multiple	
  Choice	
  Multi	
  Response	
  Scale	
   Nominal	
  
Likert	
  Scale	
  summated	
  rating	
   Interval	
  
Semantic	
  Differential	
  Scale	
   Interval	
  
Numerical	
  Scale	
   Ordinal	
  or	
  Interval	
  
Multiple	
  Rating	
  List	
  scale	
   Interval	
  
Constant	
  Sum	
  Scale	
   Ratio	
  
Stapel	
  Scale	
   Ordinal	
  or	
  Interval	
  
Graphic	
  Rating	
  Scale	
   Ordinal	
  or	
  Interval	
  or	
  Ratio	
  
	
  	
  
Good measurement characteristics
• Uni-­‐dimensionality	
  
• Linearity	
  
• Validity:	
  (ConPreCon)	
  	
  
o Validity	
   refers	
   to	
   how	
   effective	
   an	
   instrument	
   is	
   in	
   measuring	
   a	
  
property	
  it	
  intends	
  to	
  measure.	
  	
  
o Three	
   types	
   of	
   validity	
   are	
   Content	
   Validity	
   (Face	
   Validity	
   and	
  
Sampling	
  Validity),	
  Predictive	
  Validity	
  and	
  Construct	
  Validity	
  
o Content	
   Validity-­Face	
   Validity:	
   Subjective	
   evaluation	
   of	
   a	
  
measuring	
  scale.	
  E.g.	
  a	
  researcher	
  may	
  develop	
  a	
  scale	
  to	
  measure	
  
consumer	
  attitude	
  towards	
  a	
  brand	
  and	
  pre-­‐test	
  the	
  scale	
  among	
  a	
  
few	
   experts.	
   If	
   the	
   researchers	
   are	
   satisfied,	
   the	
   researcher	
   may	
  
conclude	
  that	
  the	
  scale	
  has	
  face	
  validity	
  
o Content	
   Validity	
   –	
   Sampling	
   Validity:	
   Refers	
   to	
   how	
  
representative	
  the	
  content	
  of	
  the	
  measuring	
  instrument	
  is.	
  E.g.	
  If	
  
attitude	
  is	
  the	
  characteristic	
  being	
  measured,	
  its	
  content	
  universe	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
8	
  
may	
  comprise	
  statements	
  and	
  questions	
  indicating	
  which	
  aspects	
  
of	
  attitude	
  need	
  to	
  be	
  measured.	
  This	
  is	
  also	
  based	
  on	
  judgment	
  
o Predictive	
   Validity:	
   Refers	
   to	
   the	
   extent	
   to	
   which	
   one	
   behavior	
  
can	
  be	
  predicted	
  based	
  on	
  another.	
  E.g.	
  In	
  the	
  case	
  of	
  admission	
  
test	
  designed	
  for	
  prospective	
  MBA	
  students,	
  the	
  predictive	
  validity	
  
of	
   the	
   test	
   would	
   be	
   determined	
   by	
   the	
   association	
   between	
   the	
  
scores	
  on	
  the	
  test	
  and	
  the	
  grade	
  point	
  average	
  secured	
  by	
  students	
  
during	
  the	
  first	
  semester	
  of	
  study.	
  Correlation	
  of	
  coefficient	
  can	
  be	
  
computed	
   to	
   determine	
   the	
   predictive	
   validity	
   of	
   the	
   admission	
  
test.	
   Predictive	
   validity	
   is	
   strong	
   if	
   correlation	
   of	
   coefficient	
   is	
  
greater	
  than	
  0.5	
  
o Construct	
  Validity:	
  Is	
  a	
  conceptual	
  equation	
  that	
  is	
  developed	
  by	
  
the	
   researcher	
   based	
   on	
   theoretical	
   reasoning.	
   The	
   instrument	
  
may	
  be	
  considered	
  to	
  have	
  construct	
  validity	
  only	
  if	
  the	
  expected	
  
relationships	
  (between	
  variable	
  under	
  study	
  and	
  other	
  variables)	
  
are	
  found	
  to	
  be	
  true	
  
• Reliability	
  
• Accuracy/Precision	
  
• Simplicity	
  
• Predictability	
  
Research Problem
• Sources	
   of	
   Choosing	
   a	
   Problem:	
   Review	
   of	
   literature,	
   academic	
  
experience,	
   daily	
   experience,	
   exposure	
   to	
   field	
   situations,	
   consultations,	
  
Brain	
  storming,	
  Research	
  and	
  Intuition	
  
• Formulation	
  of	
  problem:	
  
o Internal	
   Criteria:	
   Researcher’s	
   interest,	
   Researchers	
   competence	
  
and	
  Researcher’s	
  own	
  resource	
  
o External	
  Criteria:	
  Research	
  ability	
  of	
  the	
  problem,	
  Importance	
  and	
  
urgency,	
  Novelty	
  of	
  the	
  problem,	
  Feasibility,	
  Facilities,	
  Usefulness	
  
&	
  social	
  relevance	
  and	
  Research	
  personnel	
  
• Criteria	
   for	
   good	
   research	
   problem:	
   Verifiable	
   evidence,	
   Accuracy,	
  
precision,	
   systematization,	
   objectivity,	
   recording,	
   controlling	
   conditions	
  
and	
  training	
  investigators	
  
Hypothesis
• Tentative	
  statement/assumption	
  asserting	
  a	
  relationship	
  between	
  certain	
  
facts	
  
• Its	
  intended	
  to	
  be	
  tested,	
  verified	
  or	
  rejected	
  
• It	
   contains	
   variables	
   that	
   are	
   measurable	
   and	
   specifying	
   how	
   they	
   are	
  
related	
  
• Criteria	
  
o Not	
  a	
  form	
  of	
  a	
  question	
  
o Empirically	
  testable	
  
o Specific	
  and	
  Precise	
  
o Shouldn’t	
  be	
  contradictory	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
9	
  
o Should	
  specify	
  variables	
  between	
  which	
  the	
  relationship	
  is	
  to	
  be	
  
established	
  
o Should	
  describe	
  only	
  one	
  relationship	
  
• Nature	
  of	
  Hypothesis	
  
o Accurately	
  reflect	
  the	
  relevant	
  sociological	
  fact	
  
o Not	
  be	
  in	
  contradiction	
  with	
  approved	
  relevant	
  statements	
  of	
  
other	
  scientific	
  disciplines	
  
o Must	
  consider	
  the	
  experience	
  of	
  other	
  researchers	
  
• Characteristics	
  of	
  Good	
  Hypothesis	
  
o Conceptual	
  Clarity	
  
o Specificity	
  
o Testability	
  
o Availability	
  of	
  techniques	
  
o Theoretical	
  relevance	
  
o Consistency	
  
o Objectivity	
  
o Simplicity	
  
• Types:	
  	
  
o Null	
  Hypothesis	
  (H0)	
  If	
  we	
  are	
  to	
  compare	
  method	
  A	
  with	
  method	
  
B	
  about	
  its	
  superiority	
  and	
  if	
  we	
  proceed	
  on	
  the	
  assumption	
  that	
  
both	
  methods	
  are	
  equally	
  good,	
  then	
  this	
  situations	
  is	
  termed	
  as	
  
null	
   hypothesis.	
   E.g.	
   If	
   we	
   want	
   to	
   test	
   the	
   hypothesis	
   that	
   the	
  
population	
   mean	
   is	
   equal	
   to	
   the	
   hypothesis	
   mean	
   equal	
   to	
   100.	
  
Then	
  null	
  hypothesis	
  would	
  be	
  H0	
  :µ=µ	
  H0	
  =	
  100	
  
o Alternative	
  Hypothesis	
  (Ha)	
  If	
  our	
  sample	
  results	
  do	
  not	
  support	
  
this	
   null	
   hypothesis,	
   we	
   should	
   conclude	
   that	
   something	
   else	
   is	
  
true.	
  What	
  we	
  conclude	
  rejecting	
  the	
  null	
  hypothesis	
  is	
  known	
  as	
  
alternative	
   hypothesis.	
   E.g.	
   For	
   the	
   same	
   example,	
   the	
   alternate	
  
hypothesis	
  are:	
  
 Ha:	
  µ≠µ	
  H0	
  	
  -­‐	
  Population	
  mean	
  is	
  not	
  equal	
  to	
  100	
  
 Ha:	
  µ>µ	
  H0	
  	
  -­‐	
  Population	
  mean	
  is	
  greater	
  than	
  100	
  
 Ha:	
  µ<µ	
  H0	
  	
  -­‐	
  Population	
  mean	
  is	
  lesser	
  than	
  100	
  
• Level	
   of	
   Significance:	
   If	
   we	
   take	
   level	
   of	
   significance	
   as	
   5%,	
   then	
   this	
  
implies	
  that	
  researcher	
  is	
  willing	
  to	
  take	
  as	
  much	
  as	
  5%	
  risk	
  rejecting	
  the	
  
null	
  hypothesis	
  when	
  it	
  happens	
  to	
  be	
  true	
  
• Decision	
   Rule	
   of	
   Test	
   of	
   Hypothesis:	
  Making	
   rule,	
   which	
   is	
   known	
   as	
  
decision	
   rule	
   according	
   to	
   which	
   we	
   accept	
   Null	
   hypothesis	
   (rejecting	
  
alternative	
   hypothesis)	
   or	
   reject	
   null	
   hypothesis	
   (accepting	
   alternative	
  
hypothesis).	
  E.g.	
  If	
  Null	
  hypothesis	
  states	
  that	
  a	
  certain	
  lot	
  is	
  good	
  (less	
  
defective	
  items)	
  and	
  alternate	
  hypothesis	
  is	
  that	
  the	
  lot	
  is	
  not	
  good	
  (many	
  
defective	
  items).	
  In	
  this	
  case,	
  we	
  need	
  to	
  decide	
  the	
  number	
  of	
  items	
  to	
  be	
  
tested	
   and	
   the	
   criterion	
   for	
   accepting	
   or	
   rejecting	
   the	
   hypotheses.	
   We	
  
might	
  test	
  10	
  items	
  in	
  the	
  lot	
  and	
  plan	
  our	
  decision	
  saying	
  that	
  if	
  there	
  are	
  
none	
   or	
   only	
   1	
   defective	
   item	
   among	
   the	
   10,	
   then	
   we	
   will	
   accept	
   Null	
  
hypothesis	
   else	
   we	
   will	
   reject	
   Null	
   Hypothesis	
   (and	
   accept	
   alternative	
  
hypothesis).	
  This	
  sort	
  of	
  basis	
  is	
  known	
  as	
  decision	
  rule	
  
• Type	
   1	
   and	
   Type	
   2	
   Errors	
   (Type	
   1	
   error	
   is	
   also	
   called	
   as	
   level	
   of	
  
significance	
  of	
  test)	
  
	
   DECISION	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
10	
  
	
   Accept	
  NULL	
   Reject	
  NULL	
  
Null	
  Hypothesis	
  (TRUE)	
   Correct	
  Decision	
   Type	
  1	
  Error	
  (α	
  error)	
  
Null	
  Hypothesis	
  (FALSE)	
   Type	
  II	
  Error	
  (β	
  error)	
   Correct	
  Decision	
  
	
  
• Two	
  Tailed	
  Test	
  and	
  One	
  Tailed	
  Test:	
  	
  
o Two	
   tailed	
   test	
   rejects	
   the	
   Null	
   hypothesis	
   if,	
   we	
   say,	
   the	
  
sample	
   mean	
   is	
   significantly	
   higher	
   or	
   lower	
   than	
   the	
  
hypothesized	
  value	
  of	
  the	
  mean	
  of	
  the	
  population	
  
o One	
  tailed	
  test:	
  When	
  we	
  have	
  to	
  say	
  the	
  population	
  mean	
  is	
  
either	
  lower	
  than	
  or	
  higher	
  than	
  some	
  hypothesized	
  value	
  	
  
• Testing	
  Hypothesis:	
  
o Make	
   a	
   formal	
   statement	
   -­‐	
   State	
   NULL	
   hypothesis	
   as	
   well	
   as	
  
ALTERNATIVE	
  hypothesis	
  
o Specify	
  the	
  level	
  of	
  significance	
  
o Decide	
  the	
  correct	
  sampling	
  distribution	
  
o Decide	
  the	
  sampling	
  distribution	
  to	
  use	
  
o Sample	
  a	
  random	
  sample	
  and	
  workout	
  an	
  appropriate	
  value	
  
o Calculate	
  the	
  probability	
  that	
  sample	
  result	
  would	
  diverge	
  as	
  
widely	
   as	
   it	
   has	
   from	
   expectations,	
   if	
   NULL	
   hypothesis	
   were	
  
true	
  
o Compare	
  the	
  probability	
  -­‐	
  If	
  the	
  probability	
  equal	
  to	
  or	
  smaller	
  
than	
   the	
   Alpha	
   value	
   in	
   case	
   of	
   one	
   tailed	
   test	
   or	
   equal	
   to	
  
Alpha/2	
  in	
  case	
  of	
  two-­‐tailed	
  test,	
  reject	
  NULL	
  hypothesis	
  else	
  
accept	
  NULL	
  hypothesis	
  
• Tests	
  of	
  Significance	
  or	
  Tests	
  of	
  Hypothesis:	
  
o Parametric	
  Tests	
  (Standard	
  Tests)	
  –	
  Assume	
  certain	
  properties	
  
of	
   the	
   parent	
   population	
   from	
   which	
   we	
   draw	
   samples.	
   E.g.	
  
sample	
  size,	
  population	
  parameters	
  like	
  mean,	
  variants	
  etc.	
  All	
  
tests	
  are	
  based	
  on	
  the	
  assumption	
  of	
  normality	
  (Source	
  of	
  data	
  
is	
  considered	
  to	
  be	
  normally	
  distributed)	
  
o Non	
  Parametric	
  Test	
  or	
  Distribution	
  (Free	
  test	
  of	
  hypothesis)	
  –	
  
Statistical	
  method	
  
o Important	
  Parametric	
  tests	
  
 z-­Test:	
   	
   Used	
   generally	
   for	
   comparing	
   the	
   mean	
   of	
   a	
  
sample	
  to	
  some	
  hypothesis	
  mean	
  for	
  the	
  population	
  in	
  
case	
   of	
   large	
   sample,	
   or	
   when	
   population	
   variance	
   is	
  
known.	
  Based	
  on	
  normal	
  probability	
  distribution	
  and	
  is	
  
used	
   to	
   judging	
   the	
   significance	
   of	
   several	
   statistical	
  
measures,	
   particularly	
   the	
   mean.	
   Test	
   is	
   also	
   used	
   for	
  
both	
  binomial	
  distribution	
  and	
  t-­‐distribution.	
  
 t-­test:	
   Used	
   in	
   case	
   of	
   small	
   sample	
   when	
   population	
  
variance	
   is	
   unknown.	
   Based	
   on	
   t-­‐distribution	
   and	
   is	
  
considered	
   an	
   appropriate	
   test	
   for	
   judging	
   the	
  
significance	
  of	
  sample	
  mean	
  or	
  for	
  judging	
  significance	
  
of	
   difference	
   between	
   the	
   two	
   means	
   of	
   the	
   two	
  
samples.	
  
 x2	
   test:	
   Used	
   for	
   comparing	
   a	
   sample	
   variance	
   to	
   a	
  
theoretical	
   population	
   variance	
   is	
   unknown.	
   Based	
   on	
  
chi-­‐square	
  distribution	
  	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
11	
  
 f-­test:	
   Used	
   to	
   compare	
   the	
   variance	
   of	
   the	
   two	
  
independent	
   samples.	
   This	
   test	
   is	
   also	
   used	
   in	
   the	
  
context	
  of	
  variance	
  (ANOVA)	
  for	
  judging	
  the	
  significance	
  
of	
  more	
  than	
  2	
  sample	
  means	
  at	
  the	
  same	
  time	
  and	
  also	
  
for	
  judging	
  the	
  significance	
  of	
  multiple	
  coefficients.	
  This	
  
is	
  based	
  on	
  f-­‐distribution	
  
Case Study
• Case	
  study	
  is	
  a	
  method	
  of	
  exploring	
  and	
  analyzing	
  the	
  life	
  of	
  a	
  social	
  unit	
  
or	
  entity,	
  be	
  it	
  a	
  person,	
  a	
  family,	
  an	
  institution	
  or	
  a	
  community	
  
• The	
   aim	
   of	
   case	
   study	
   method	
   is	
   to	
   locate	
   or	
   identify	
   the	
   factors	
   that	
  
account	
  for	
  the	
  behavior	
  patterns	
  of	
  a	
  given	
  unit	
  and	
  its	
  relationship	
  with	
  
the	
  environment	
  
• It	
   depends	
   upon	
   the	
   wit,	
   commonsense	
   and	
   imagination	
   of	
   the	
   person	
  
doing	
  the	
  case	
  study.	
  
• Efforts	
   should	
   be	
   made	
   to	
   ascertain	
   the	
   reliability	
   of	
   life	
   history	
   data	
  
through	
   examining	
   the	
   internal	
   consistency	
   of	
   the	
   material.	
   A	
   judicious	
  
combination	
  of	
  techniques	
  of	
  data	
  collection	
  is	
  a	
  prerequisite	
  for	
  securing	
  
data	
  that	
  are	
  culturally	
  meaningful	
  and	
  scientifically	
  significant	
  
• In-­‐depth	
   analysis	
   of	
   selected	
   cases	
   is	
   of	
   particular	
   value	
   to	
   business	
  
research	
  when	
  a	
  complex	
  set	
  of	
  variables	
  may	
  be	
  at	
  work	
  in	
  generating	
  
observed	
   results	
   and	
   intensive	
   study	
   is	
   needed	
   to	
   unravel	
   the	
  
complexities	
  
Sampling
• A	
  part	
  of	
  the	
  population	
  is	
  known	
  as	
  sample.	
  The	
  method	
  consisting	
  of	
  the	
  
selecting	
   for	
   study,	
   a	
   portion	
   of	
   the	
   universe	
   with	
   a	
   view	
   to	
   draw	
  
conclusions	
  about	
  the	
  universe	
  or	
  population	
  is	
  known	
  as	
  sampling	
  
• Census	
  (Total	
  Population)	
  	
  Target	
  Population	
  (Whom	
  we	
  are	
  concerned	
  
with)	
  	
  Sample	
  Frame	
  (Criteria	
  through	
  which	
  we	
  will	
  be	
  selecting)	
  	
  
Sample	
  Unit	
  (Categories)	
  	
  Sample	
  Element	
  	
  Sample	
  Size	
  
• Sample	
  size	
  depends	
  on	
  
o Variability	
  of	
  population	
  (standard	
  deviation)	
  –Can	
  be	
  found	
  out	
  
by	
  Pilot	
  study	
  
o Confidence	
  attached	
  to	
  the	
  estimate	
  	
  (Confidence	
  Interval)	
  
o Allowable	
  error	
  or	
  margin	
  of	
  error	
  (Tolerable	
  Error)	
  
• Sample	
  Size	
  
o Determining	
  Sample	
  size	
  in	
  case	
  of	
  continuous	
  and	
  interval	
  scale	
  
 n	
   =	
   (Z2	
   (Std	
   Dev)2	
   )	
   /	
   (e2)	
   where	
   Z	
   =	
   Value	
   of	
   given	
  
confidence	
  interval,	
  n	
  =	
  sample	
  size,	
  Std	
  Dev	
  =	
  Range/6	
  and	
  
Range=	
  Max	
  Value	
  -­‐1	
  
o For	
  Dichotomy	
  questions	
  
 n	
   =	
   (Z2	
   (pq	
   ))	
   /	
   (e2)	
   where	
   p=probability	
   of	
   success	
  
(frequency	
  of	
  people	
  saying	
  yes)	
  
 If	
  p	
  is	
  not	
  known,	
  then	
  n	
  =	
  (¼)(Z2	
  	
  /	
  (e2)	
  	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
12	
  
• Sample	
  Techniques	
  
o Non	
  Probabilistic:	
  Convenience	
  (Accidental),	
  Judgmental	
  (Expert	
  
Opinion	
   or	
   Purposive),	
   Quota,	
   Snowball	
   (Going	
   through	
  
references)	
  
o Probabilistic:	
  Simple	
  Random,	
  Systematic	
  Sample	
  (E.g.:	
  Every	
  5th,	
  
11th,	
  16th	
  etc),	
  Stratified	
  (homogenous),	
  Cluster	
  (Heterogeneous)	
  
o Stratified	
  can	
  be	
  either	
  proportionate	
  or	
  disproportionate	
  	
  
o In	
  scientific	
  research	
  only	
  probabilistic	
  sampling	
  technique	
  need	
  to	
  
be	
  used	
  
o Quota	
  vs.	
  Stratified	
  
 Quota	
  is	
  non	
  probabilistic	
  and	
  Stratified	
  is	
  probabilistic	
  
 Both	
   are	
   homogeneous	
   within	
   Quota/Strata	
   and	
  
heterogeneous	
  across	
  Quota/Strata	
  
 Both	
  are	
  2-­‐stage	
  process.	
  In	
  first	
  step	
  Quota	
  and	
  Stratified	
  
are	
   same.	
   Once	
   its	
   Quota	
   or	
   stratified,	
   next	
   step	
   would	
  
employ	
   different	
   methods.	
   In	
   Quota	
   it	
   would	
   be	
   non	
  
probability	
   method	
   and	
   in	
   Stratified,	
   it	
   would	
   be	
  
probabilistic	
  	
  
• Quota:	
   Convenience,	
   Judgmental	
   or	
   Snow	
   ball	
  
sampling	
  
• Stratified:	
  Simple	
  Random	
  or	
  Systematic	
  Random	
  	
  
o Cluster	
  vs.	
  Stratified	
  
 Heterogeneity	
   within	
   Cluster	
   and	
   Homogenous	
   across	
  
cluster	
  	
  
 Homogeneous	
   within	
   Strata	
   and	
   heterogeneous	
   across	
  
Strata	
  
o Multi	
   stage	
   sampling:	
   Cluster	
   	
   Stratified	
   	
   Systematic/Simple	
  
Random	
  
Data Preparation Process
• Check	
  Questionnaire:	
  Edit,	
  Code,	
  Transcribe,	
  Clean	
  
• Statistically	
  Adjust	
  data	
  /	
  Statistical	
  Analysis.	
  The	
  two	
  types	
  are:	
  
o Descriptive	
  (Data)	
  
o Inferential	
  (Hypothesis)	
  
	
  
	
  
	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
13	
  
	
  
STATISTICS
Distribution:
o Normal	
  Distribution	
  
o Frequency	
  Distribution	
  (Poisson,	
  Binomial,	
  Normal)	
  
• Discrete	
  Frequency	
  Distribution	
  
x	
   f	
  
74	
   4	
  
83	
   3	
  
93	
   8	
  
• Continuous	
  Frequency	
  Distribution	
  
x	
   f	
  
0-­‐10	
   4	
  
10-­‐20	
   3	
  
20-­‐30	
   8	
  
	
  
o For	
  more	
  Probability	
  Distribution:	
  
http://en.wikipedia.org/wiki/Probability_distribution
Characteristics of a statistical data
• Central	
  Tendency:	
  Measured	
  by	
  statistical	
  averages	
  
o Mathematical	
  Average:	
  Arithmetic	
  Mean,	
  Geometric	
  Mean,	
  
Harmonic	
  Mean	
  
o Positional	
  Average:	
  Median,	
  Mode	
  
• Dispersion	
  
• Skewness	
  
• Kurtosis	
  
Arithmetic Mean
o AM=∑X/N	
  where	
  ∑X	
  =	
  Sum	
  of	
  the	
  item	
  and	
  N	
  is	
  the	
  number	
  of	
  items	
  
o If	
   frequency	
   is	
   given,	
   then	
   AM=∑fx/∑f	
   where	
   ∑fx	
   =	
   sum	
   of	
   the	
   values	
  
multiplied	
  by	
  the	
  corresponding	
  frequency	
  and	
  ∑f	
  	
  is	
  sum	
  of	
  frequency	
  
	
  
o Arithmetic	
  mean	
  of	
  58,67,68,84,93,98,100	
  
 ∑X	
  	
  =	
  58+67+68+84+93+98+100	
  =	
  560	
  
 N	
  =	
  number	
  of	
  items	
  =	
  7	
  
 AM	
  =	
  ∑X/N	
  	
  =	
  560/7	
  =	
  80	
  
	
  
o Arithmetic	
  mean	
  of	
  following	
  50	
  workers	
  according	
  to	
  their	
  daily	
  wages	
  
 Daily	
  Wage:	
  15,	
  18,	
  20,	
  25,	
  30,	
  35,	
  40,	
  42,	
  45	
  
 Number	
  of	
  workers:	
  2,	
  3,	
  5,	
  10,	
  12,	
  10,	
  5,	
  2,	
  1	
  
Wages	
  
(x)	
  
Frequency	
  (F)	
   fx	
  
15	
   2	
   30	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
14	
  
18	
   3	
   54	
  
20	
   5	
   100	
  
25	
   10	
   250	
  
30	
   12	
   360	
  
35	
   10	
   350	
  
40	
   5	
   200	
  
42	
   2	
   84	
  
45	
   1	
   45	
  
 ∑fx	
  	
  =	
  473	
  and	
  ∑f	
  	
  =	
  50	
  
 AM	
  =∑fx/∑f	
  	
  =	
  473/50	
  =	
  29.46	
  
	
  
o Arithmetic	
  mean	
  for	
  the	
  following	
  distribution	
  
 Marks	
  10-­‐20	
  20-­‐30	
  30-­‐40	
  40-­‐50	
  50-­‐60	
  60-­‐70	
  80-­‐90	
  
 Number	
  of	
  students:	
  6	
  12	
  18	
  20	
  20	
  14	
  8	
  2	
  
Marks	
   Frequency	
  (F)	
   Mid	
  Value	
  (x)	
  
Mean	
  
fx	
  
10-­‐20	
   6	
   15	
   90	
  
20-­‐30	
   12	
   25	
   300	
  
30-­‐40	
   18	
   35	
   630	
  
40-­‐50	
   20	
   45	
   900	
  
50-­‐60	
   20	
   55	
   1100	
  
60-­‐70	
   14	
   65	
   910	
  
70-­‐80	
   8	
   75	
   600	
  
40-­‐90	
   2	
   85	
   170	
  
	
  
 ∑fx	
  	
  =	
  4700	
  and	
  ∑f	
  	
  =	
  100	
  
 AM	
  =	
  =∑fx/∑f	
  	
  =	
  4700/100	
  =	
  47	
  
Median
• Size	
  of	
  the	
  middlemost	
  value	
  
• 80,	
  86,	
  74,	
  465,	
  3,	
  984,	
  22:	
  Median	
  is	
  465	
  
• Median	
  of	
  Indian	
  age	
  is	
  26	
  means,	
  50%	
  of	
  India’s	
  population	
  will	
  be	
  less	
  
than	
  26years	
  of	
  age	
  and	
  50%	
  will	
  be	
  more	
  than	
  26yrs	
  of	
  age	
  
Mode
• Most	
  occurring	
  number	
  
Standard Deviation and Variance
o Deviation	
  from	
  Mean	
  
o It’s	
  a	
  relative	
  number	
  and	
  not	
  an	
  absolute	
  number	
  
o Lesser	
  the	
  Standard	
  Deviation,	
  higher	
  the	
  reliability	
  
o σ	
  =	
  √(∑(x-­‐xb)2	
  /	
  N)	
  
x	
   (x-­‐xb)2	
  
	
  15	
   	
  64	
  
20	
   9	
  
22	
   1	
  
28	
   25	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
15	
  
30	
   49	
  
∑x	
  =	
  115	
  	
   ∑(x	
  –xb)2	
  =	
  148	
  
• xb	
  =	
  ∑x/N	
  	
  =	
  115/5	
  =	
  23	
  
• σ	
  =	
  √(148/5)	
  =	
  5.44	
  
• Variance	
  =	
  σ2	
  =	
  29.59	
  	
  
Coefficient	
  of	
  Variation	
  
• Lesser	
  the	
  confidence	
  of	
  variation,	
  the	
  reliability	
  is	
  higher	
  
• V	
  =	
  σ	
  /xb*100	
  
• For	
  the	
  above	
  example,	
  it	
  would	
  be	
  equal	
  to	
  5.44/23*100	
  =	
  23.65	
  
• Lesser	
  the	
  CV,	
  higher	
  the	
  reliability	
  
Range	
  and	
  Coefficient	
  of	
  Range	
  
• Range	
  =	
  L-­‐S	
  
• Coefficient	
  of	
  Range	
  =	
  (L-­‐S)/(L+S)	
  
Trend Analysis (Straight Line
Analysis)
• Least	
  Square	
  Method	
  (Forecasting	
  Method)	
  
Year	
  
Sales	
  
(y)	
  
year-­midyear	
  
x	
   x2	
   xy	
  
yc	
  
bx	
  +	
  a	
  
2006	
   42	
   -­‐3.5	
   12.25	
   -­‐147	
   36.11	
  
2007	
   40	
   -­‐2.5	
   6.25	
   -­‐100	
   41.97	
  
2008	
   36	
   -­‐1.5	
   2.25	
   -­‐54	
   47.83	
  
2009	
   58	
   -­‐0.5	
   0.25	
   -­‐29	
   53.69	
  
2010	
   62	
   0.5	
   0.25	
   31	
   59.55	
  
2011	
   60	
   1.5	
   2.25	
   90	
   65.41	
  
2012	
   70	
   2.5	
   6.25	
   175	
   71.27	
  
2013	
   80	
   3.5	
   12.25	
   280	
   77.13	
  
	
   ∑y=453	
   ∑x=0	
   ∑x2=42	
   ∑xy	
  =	
  246	
   ∑yc	
  =452.96	
  
	
  
• Mid	
  year	
  =	
  2009.5	
  
• Deviation	
  from	
  Arithmetic	
  mean	
  will	
  be	
  least	
  in	
  this	
  method,	
  hence	
  its	
  
called	
  least	
  square	
  method	
  
• yc	
  =	
  bx	
  +	
  a	
  
• ∑y	
  =	
  b∑x	
  +	
  Na	
  	
  
• ∑y	
  =	
  b	
  (0)+	
  Na	
  =	
  Na	
  
• a	
  =	
  ∑y	
  /N	
  
• a	
  =	
  453/8	
  =	
  56.62	
  
• ∑xy	
  =	
  a∑x	
  +	
  b∑x	
  2	
  
• 246=	
  56.62	
  (0)	
  +	
  b	
  (42)	
  
• b	
  =	
  5.86	
  
• Forecast	
  for	
  2014,	
  x	
  =	
  4.5	
  
o yc	
  =	
  bx	
  +	
  a	
  
o yc	
  =	
  5.86	
  (4.5)	
  +	
  56.62	
  =	
  82.99	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
16	
  
• Forecast	
  for	
  2015,	
  x	
  =	
  5.5	
  
o yc	
  =	
  bx	
  +	
  a	
  
o yc	
  =	
  5.86	
  (5.5)	
  +	
  56.62	
  =	
  88.85	
  
• ∑yc	
  =	
  ∑y	
  	
  (Verification	
  Technique)	
  
Standard	
  Normal	
  Curve	
  (SNC)	
  
1. Assume	
  mean	
  height	
  of	
  soldier	
  is	
  68.22	
  inches	
  with	
  a	
  variance	
  of	
  10.8	
  
inches.	
  How	
  many	
  soldiers	
  in	
  a	
  regiment	
  of	
  1000	
  would	
  you	
  expect	
  to	
  
be	
  over	
  6ft	
  tall	
  
• σ	
  2	
  =	
  10.8	
  
• σ	
  =	
  3.29	
  
• x	
  =	
  6	
  feet	
  =	
  72	
  inches	
  
• xb	
  =	
  68.22	
  (mean)	
  
• z	
  =	
  SNC	
  =	
  (x-­‐xb)/σ	
  	
  =	
  (72-­‐68.22)/3.29	
  =	
  1.15	
  
	
  
• From	
  the	
  Statistical	
  Table	
  for	
  1.15	
  its	
  =>	
  0.5	
  –	
  0.3759	
  =	
  0.1251	
  
• 0.1251*1000	
  =125	
  soldiers	
  are	
  taller	
  than	
  1000	
  
	
  
2. 1000	
  light	
  bulbs	
  with	
  a	
  mean	
  life	
  of	
  120	
  days	
  are	
  installed	
  in	
  a	
  new	
  
factory.	
  They	
  have	
  length	
  of	
  life	
  is	
  normally	
  distributed	
  with	
  Standard	
  
deviation	
  of	
  20	
  days.	
  How	
  many	
  bulbs	
  will	
  expire	
  in	
  less	
  than	
  90	
  days?	
  
How	
  many	
  bulbs	
  will	
  burn	
  for	
  more	
  than	
  125	
  days?	
  
• N	
  =	
  1000	
  
• xb	
  =	
  120	
  
• σ	
  =	
  20	
  
• x	
  =90	
  
• Z	
  =	
  SNC	
  =	
  (x-­‐xb)/σ	
  =	
  (90-­‐120)/20	
  =	
  -­‐1.5	
  
	
  
• From	
  the	
  statistical	
  table	
  for	
  -­‐1.5	
  its	
  =>	
  0.5	
  -­‐0.4332	
  =	
  0.0668	
  
• 0.0668*1000	
  =	
  67	
  Bulbs	
  
	
  
• N	
  =	
  1000	
  
• xb	
  =	
  120	
  
• σ	
  =	
  20	
  
• x	
  =125	
  
• Z	
  =	
  SNC	
  =	
  (x-­‐xb)/σ	
  =	
  (125-­‐120)/20	
  =	
  0.25	
  
	
  
• From	
  the	
  statistical	
  table	
  for	
  0.25	
  its	
  =>	
  0.5	
  -­‐0.0987	
  =	
  0.4013	
  
• 0.4013*1000	
  =	
  401	
  bulbs	
  
Non parametric test – (χ2) kai2 test
o χ2	
   	
   =	
   kai2	
   	
   =	
   ∑	
   (O-­‐E)2/E2	
   	
   	
   where	
   O	
   =	
   Observed	
   Frequency	
   and	
   E	
   =	
  
Expected	
  frequency	
  
o In	
   a	
   certain	
   area	
   in	
   Bangalore,	
   the	
   corporation	
   distributed	
   pills	
   to	
  
combat	
  CG.	
  From	
  the	
  data	
  given	
  below	
  analyze	
  whether	
  the	
  pills	
  given	
  
were	
  effective	
  or	
  not	
  in	
  combating	
  the	
  disease	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
17	
  
	
   Fell	
  Ill	
   Not	
  Ill	
  
Took	
  Pills	
   345	
   620	
  
Dint	
  take	
  
pills	
  
545	
   450	
  
	
  
o Null	
  Hypothesis:	
  Given	
  pills	
  are	
  not	
  effective	
  in	
  controlling	
  the	
  said	
  
disease	
  
	
  
Table	
  of	
  Observed	
  Frequency	
  (O)	
  
345	
   620	
   965	
  (Row	
  1	
  Total)	
  
545	
   450	
   995	
  (Row	
  2	
  Total)	
  
890	
  (Column1	
  Total)	
   1070	
  (Column	
  1	
  
Total)	
  
1960	
  (Grand	
  
Total)	
  
	
  
• E	
  =	
  (RT	
  *	
  CT)	
  /	
  GT	
  
	
  
• Table	
  of	
  Expected	
  Frequency	
  (E)	
  
	
  
• E345	
  =	
  965*890	
  /	
  1960	
  =	
  438.19	
  
• E620	
  =	
  965*1070	
  /	
  1960	
  =	
  526.81	
  
• E545	
  =	
  995*890	
  /	
  1960	
  =	
  451.81	
  
• E450	
  =	
  995*1070/	
  1960	
  =	
  543.19	
  
	
  
438.19	
   526.81	
   965	
  	
  
451.81	
   543.19	
   995	
  	
  
890	
  	
   1070	
  	
   1960	
  	
  
	
  
O	
   E	
   (O-­E)2/E2	
  
345	
   438.19	
   0.045	
  
545	
  	
   451.81	
   0.042	
  
620	
   526.81	
   0.032	
  
450	
   543.19	
   0.029	
  
	
   	
   ∑	
  (O-­‐E)2/E2	
  	
  	
  =	
  
0.148	
  
	
  
• χ2	
  =	
  Kai2	
  =	
  0.148	
  
• Degree	
  of	
  freedom	
  	
  =	
  (r-­‐1)	
  (c-­‐1)	
  =	
  (2-­‐1)(2-­‐1)	
  =	
  1	
  
• Taking	
  the	
  significance	
  level	
  to	
  be	
  5%	
  (Confidence	
  level	
  as	
  95%),	
  
from	
  the	
  statistical	
  table,	
  we	
  can	
  find	
  that	
  the	
  table	
  value	
  is	
  3.84	
  
• As	
   calculated	
   hypothesis	
   =	
   0.1484	
   is	
   less	
   than	
   the	
   table	
   value	
   of	
  
3.84,	
  Null	
  hypothesis	
  is	
  accepted	
  
ANNOVA – Analysis of Variance
1. 5	
   salesmen	
   work	
   in	
   4	
   cities.	
   Based	
   on	
   the	
   data	
   given	
   determine	
  
whether	
  there	
  is	
  a	
  significance	
  difference	
  in	
  the	
  sales	
  performance	
  of	
  
different	
  cities	
  
Salesmen	
   A	
   B	
   C	
   D	
  
S1	
   14	
   12	
   13	
   15	
  
S2	
   15	
   14	
   12	
   11	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
18	
  
S3	
   16	
   17	
   15	
   10	
  
S4	
   12	
   16	
   15	
   14	
  
S5	
   10	
   11	
   15	
   17	
  
	
  
• Null	
  Hypothesis:	
  There	
  is	
  no	
  significance	
  difference	
  in	
  the	
  sale	
  
performance	
  of	
  different	
  cities	
  
	
   X1	
   X2	
   X3	
   X4	
  
	
   14	
   12	
   13	
   15	
  
	
   15	
   14	
   12	
   11	
  
	
   16	
   17	
   15	
   10	
  
	
   12	
   16	
   15	
   14	
  
	
   10	
   11	
   15	
   17	
  
∑X	
   67	
   70	
   70	
   67	
  
Xb	
  =	
  ∑X/N	
  (N=5)	
   13.4	
   14	
   14	
   13.4	
  
	
  
• Grand	
  Mean	
  =	
  Xbb	
  =	
  ∑Xb/N	
  =	
  (13.4	
  +	
  14	
  +	
  14	
  +	
  13.4)/4	
  =	
  13.7	
  
	
  
• Variance	
  between	
  samples	
  
	
   (X1b-­
X1bb)2	
  
(X2b-­
X2bb)2	
  
(X3b-­
X3bb)2	
  
(X4b-­X4bb)2	
  
	
   0.09	
   0.09	
   0.09	
   0.09	
  
	
   0.09	
   0.09	
   0.09	
   0.09	
  
	
   0.09	
   0.09	
   0.09	
   0.09	
  
	
   0.09	
   0.09	
   0.09	
   0.09	
  
	
   0.09	
   0.09	
   0.09	
   0.09	
  
∑	
   0.45	
   0.45	
   0.45	
   0.45	
  
	
  
• Sum	
  of	
  Squares	
  =	
  0.45	
  +	
  0.45	
  +	
  0.45	
  +	
  0.45	
  =	
  1.8	
  
• Degree	
  of	
  Freedom	
  (d.f)	
  γ1	
  	
  =	
  4	
  -­‐1	
  =	
  3	
  	
  
• Mean	
  of	
  sum	
  of	
  squares	
  =	
  1.8/3	
  =	
  0.6	
  
	
  
• Variance	
  within	
  samples	
  
	
   (X1-­X1b)2	
   (X2-­X2b)2	
   (X3-­X3b)2	
   (X4-­X4b)2	
  
	
   0.36	
   4	
   1	
   2.56	
  
	
   2.56	
   0	
   4	
   5.76	
  
	
   6.76	
   9	
   1	
   11.56	
  
	
   1.96	
   4	
   1	
   0.36	
  
	
   11.56	
   9	
   1	
   12.96	
  
∑	
   23.2	
   26	
   1	
   33.2	
  
	
  
• Sum	
  of	
  Squares	
  =	
  23.2	
  +	
  26	
  +	
  1	
  +	
  33.2	
  =	
  90.4	
  
• Degree	
  of	
  Freedom	
  (d.f)	
  γ2	
  =	
  Total	
  number	
  of	
  observations	
  –	
  Number	
  
of	
  samples	
  =	
  (5*4)	
  –	
  4	
  =	
  16	
  	
  
• Mean	
  of	
  sum	
  of	
  squares	
  =	
  90.4/16	
  =	
  5.65	
  
• 	
  
• “f”	
  test	
  (Fisher)	
  for	
  5%	
  significance	
  level	
  
• f	
  test	
  =	
  F=	
  (variation	
  between	
  samples)/(variation	
  within	
  samples)	
  =	
  
0.6/5.65	
  =	
  0.106	
  
	
  
• From	
  the	
  table,	
  m=γ1	
  and	
  n=γ2	
  ,	
  m=3	
  and	
  n=16,	
  value	
  of	
  F=3.2389	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
19	
  
	
  
• Calculated	
  value	
  F=0.106	
  is	
  less	
  than	
  the	
  table	
  value	
  3.2389	
  so	
  Null	
  
Hypothesis	
  is	
  accepted	
  
	
  
2. 5	
   salesmen	
   work	
   in	
   4	
   cities.	
   Based	
   on	
   the	
   data	
   given	
   determine	
  
whether	
   there	
   is	
   a	
   significance	
   difference	
   between	
   the	
   sales	
  
performance	
  of	
  different	
  salesmen	
  
Salesmen	
   A	
   B	
   C	
   D	
  
S1	
   14	
   12	
   13	
   15	
  
S2	
   15	
   14	
   12	
   11	
  
S3	
   16	
   17	
   15	
   10	
  
S4	
   12	
   16	
   15	
   14	
  
S5	
   10	
   11	
   15	
   17	
  
	
  
	
  
	
   S1	
   S2	
   S3	
   S4	
   S5	
  
City1	
   14	
   15	
   16	
   12	
   10	
  
City2	
   12	
   14	
   17	
   16	
   11	
  
City3	
   13	
   12	
   15	
   15	
   15	
  
City4	
   15	
   11	
   10	
   14	
   17	
  
∑X	
   54	
   52	
   58	
   57	
   53	
  
Xb=∑X/N	
  (N=4)	
   13.5	
   13	
   14.5	
   14.25	
   13.25	
  
	
  
• Grand	
  Mean	
  =	
  Xbb	
  =	
  ∑Xb/N	
  =	
  (13.5	
  +	
  13	
  +	
  14.5	
  +	
  14.25	
  +	
  13.25)/5=	
  
13.7	
  
	
  
• Variance	
  between	
  samples	
  
	
  
(X1b-­X1bb)2	
   (X2b-­X2bb)2	
  
(X3b-­
X3bb)2	
  
(X4b-­
X4bb)2	
  
(X5b-­
X5bb)2	
  
	
   0.04	
   0.49	
   0.64	
   0.3	
   0.2	
  
	
   0.04	
   0.49	
   0.64	
   0.3	
   0.2	
  
	
   0.04	
   0.49	
   0.64	
   0.3	
   0.2	
  
	
   0.04	
   0.49	
   0.64	
   0.3	
   0.2	
  
∑	
   0.16	
   1.96	
   2.56	
   1.2	
   0.8	
  
	
  
• Sum	
  of	
  Squares	
  =	
  0.16	
  +	
  1.96	
  +	
  2.56	
  +	
  1.2	
  +	
  0.8	
  	
  =	
  6.68	
  
• Degree	
  of	
  Freedom	
  (d.f)	
  γ1	
  	
  =	
  5	
  -­‐1	
  =	
  4	
  	
  
• Mean	
  of	
  sum	
  of	
  squares	
  =	
  6.68/4	
  =	
  1.67	
  
	
  
• Variance	
  within	
  samples	
  
	
   (X1-­X1b)2	
   (X2-­X2b)2	
   (X3-­X3b)2	
   (X4-­X4b)2	
   (X5-­X5b)2	
  
	
   0.25	
   4	
   2.25	
   5.06	
   10.56	
  
	
   2.25	
   1	
   6.25	
   3.06	
   5.06	
  
	
   0.25	
   1	
   0.25	
   0.56	
   3.06	
  
	
   2.25	
   4	
   20.25	
   0.06	
   14.06	
  
∑	
   5	
   10	
   29	
   8.74	
   32.74	
  
	
  
• Sum	
  of	
  Squares	
  =	
  5	
  +	
  10	
  +	
  29	
  +	
  8.74	
  +	
  32.74	
  =	
  85.48	
  
• Degree	
  of	
  Freedom	
  (d.f)	
  γ2	
  =	
  Total	
  number	
  of	
  observations	
  –	
  Number	
  
of	
  samples	
  =	
  (5*4)	
  –	
  5	
  =	
  15	
  	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
20	
  
• Mean	
  of	
  sum	
  of	
  squares	
  =	
  85.48/15	
  =	
  5.7	
  
• 	
  
• “f”	
  test	
  (Fisher)	
  for	
  5%	
  significance	
  level	
  
• f	
  test	
  =	
  F=	
  (variation	
  between	
  samples)/(variation	
  within	
  samples)	
  =	
  
1.67/5.7	
  =	
  0.29	
  
	
  
• From	
  the	
  table,	
  m=γ1	
  and	
  n=γ2	
  ,	
  m=4	
  and	
  n=15,	
  value	
  of	
  F=3.0556	
  
	
  
• Calculated	
  value	
  F=0.29	
  is	
  less	
  than	
  the	
  table	
  value	
  3.0556	
  so	
  Null	
  
Hypothesis	
  is	
  accepted	
  
Coefficient of Correlation
• Carls	
  Coefficient	
  Method	
  
• r	
  =	
  	
  ∑xy	
  /	
  (√(∑x2	
  *	
  ∑y2)	
  where	
  x	
  =	
  X-­‐Xb	
  and	
  y	
  =	
  Y-­‐Yb	
  
	
  
• Calculate	
  the	
  coefficient	
  of	
  correlation	
  for	
  the	
  following	
  value	
  
X	
   Y	
  
24	
   16	
  
36	
   22	
  
32	
   34	
  
38	
   48	
  
40	
   60	
  
	
  
	
   X	
   Y	
   x=X-­‐Xb	
  	
   y=Y-­‐Yb	
  	
   x2	
   y2	
   xy	
  
	
   24	
   16	
   -­‐10	
   -­‐20	
   100	
   400	
   200	
  
	
   36	
   22	
   +2	
   -­‐14	
   4	
   196	
   -­‐28	
  
	
   32	
   34	
   -­‐2	
   -­‐2	
   4	
   4	
   4	
  
	
   38	
   48	
   4	
   4	
   16	
   144	
   48	
  
	
   40	
   60	
   6	
   6	
   36	
   576	
   144	
  
∑	
   170	
   180	
   	
   	
   160	
   1320	
   368	
  
	
  
• Xb	
  =	
  ∑X/N	
  =	
  170/5	
  =	
  34	
  
• Yb	
  =	
  ∑Y/N	
  =	
  180/5	
  =	
  36	
  
• r	
  =	
  	
  ∑xy	
  /	
  (√(∑x2	
  *	
  ∑y2)	
  	
  =	
  368/(√(160*1320)	
  =	
  0.8	
  
Regression
o x	
  on	
  y	
  
 X-­‐Xb=	
  bxy	
  (Y-­‐Yb)	
  
 bxy	
  =	
  ∑xy	
  /	
  ∑y2	
  	
  
o y	
  on	
  x	
  
 Y-­‐Yb=	
  byx	
  (X-­‐Xb)	
  
 	
  byx	
  =	
  ∑xy	
  /	
  ∑x2	
  	
  
o Calculate	
  the	
  regression	
  for	
  the	
  following	
  table	
  	
  
X	
   Y	
  
32	
   12	
  
48	
   15	
  
24	
   18	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
21	
  
26	
   25	
  
30	
   20	
  
	
  
	
   X	
   Y	
   x=X-­‐Xb	
  	
   y=Y-­‐Yb	
  	
   x2	
   y2	
   xy	
  
	
   32	
   12	
   -­‐0	
   -­‐6	
   0	
   36	
   0	
  
	
   48	
   15	
   16	
   -­‐3	
   256	
   9	
   -­‐48	
  
	
   24	
   18	
   -­‐8	
   0	
   64	
   0	
   0	
  
	
   26	
   25	
   -­‐6	
   7	
   36	
   49	
   -­‐42	
  
	
   30	
   20	
   -­‐2	
   2	
   4	
   4	
   -­‐4	
  
∑	
   160	
   90	
   	
   	
   360	
   98	
   -­‐94	
  
	
  
• Xb	
  =	
  ∑X/N	
  =	
  160/5	
  =	
  32	
  
• Yb	
  =	
  ∑Y/N	
  =	
  90/5	
  =	
  18	
  
	
  
• x	
  on	
  y	
  
• bxy	
  =	
  ∑xy	
  /	
  ∑y2	
  	
  =	
  -­‐94/	
  98	
  =	
  -­‐	
  0.96	
  
• X-­‐Xb=	
  bxy	
  (Y-­‐Yb)	
  
• X-­‐32	
  =	
  -­‐0.96(Y-­‐18)	
  =>	
  X=	
  -­‐0.96Y	
  +	
  49.28	
  
	
  
• y	
  on	
  x	
  
• byx	
  =	
  ∑xy	
  /	
  ∑x2	
  	
  =	
  -­‐94/360	
  =	
  -­‐0.26	
  
• Y-­‐Yb=	
  byx	
  (X-­‐Xb)	
  
• Y-­‐18	
  =	
  -­‐0.26(X-­‐32)	
  =>	
  Y	
  =	
  -­‐0.26X	
  +	
  26.32	
  
Small Sample Test
o T	
  Test	
  (Student	
  Test)	
  when	
  sample	
  size	
  is	
  less	
  than	
  30	
  
o t	
  =	
  (Xb	
  -­‐	
  µ0)	
  /	
  (s/√n-­‐1)	
  
	
  
1. The	
  mean	
  percentage	
  of	
  passes	
  in	
  all	
  the	
  schools	
  of	
  a	
  town	
  was	
  found	
  
to	
   be	
   83%.	
   A	
   random	
   sample	
   of	
   17	
   schools	
   revealed	
   that	
   86%	
   pass	
  
with	
  standard	
  deviation	
  of	
  3%.	
  Test	
  a	
  1%	
  level	
  of	
  significance	
  whether	
  
the	
  mean	
  percentage	
  of	
  passes	
  is	
  more	
  than	
  83%	
  
• µ	
  =	
  83%	
  
• n	
  =	
  17	
  
• Xb	
  =	
  86%	
  
• s=	
  3%	
  
• Degree	
  of	
  freedom	
  =	
  n-­‐1	
  =	
  16	
  
• Level	
  of	
  Significance	
  =	
  1%	
  
	
  
• Null	
  Hypothesis	
  (H0):	
  Mean	
  percentage	
  of	
  passes	
  is	
  less	
  than	
  83%	
  
• Alternate	
  Hypothesis	
  (Ha):	
  Mean	
  percentage	
  of	
  passes	
  is	
  more	
  than	
  
83%	
  
	
  
• tcal	
  =	
  (Xb	
  -­‐	
  µ0)	
  /	
  (s/√n-­‐1)	
  =	
  (86-­‐83)	
  /	
  3/√(17-­‐1)	
  =	
  4	
  
	
  
• From	
  the	
  statistics	
  table,	
  ttable	
  =	
  2.583	
  (For	
  Degree	
  of	
  freedom	
  =	
  16	
  and	
  
Level	
  of	
  significance	
  of	
  1%)	
  
	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
22	
  
• ttable	
  <	
  tcal	
  implies	
  that	
  the	
  Null	
  Hypothesis	
  is	
  in	
  critical	
  region	
  so	
  its	
  not	
  
accepted	
  so	
  Ha	
  is	
  accepted	
  
	
  
	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
23	
  
	
  
IMPORTANT QUESTIONS
1. Distinguish	
   between	
   probability	
   and	
   non	
   probability	
   sampling	
  
methods’	
  by	
  giving	
  suitable	
  examples	
  
2. Research	
  refers	
  to	
  ends	
  and/or	
  means.	
  Discuss	
  this	
  statement	
  
3. Hypothesis	
  is	
  the	
  guiding	
  force	
  in	
  any	
  research	
  study?	
  Justify	
  and	
  
explain	
  the	
  process	
  of	
  hypothesis	
  formulation	
  and	
  testing	
  it	
  with	
  
suitable	
  example	
  
4. Briefly	
  describe	
  the	
  contents	
  of	
  a	
  research	
  report	
  
5. Briefly	
  describe	
  the	
  various	
  methods	
  used	
  for	
  descriptive	
  analysis	
  
of	
  data	
  
6. What	
   is	
   sampling?	
   List	
   the	
   similarities	
   and	
   differences	
   between	
  
stratified	
  sampling	
  and	
  quota	
  sampling	
  
7. How	
   are	
   research	
   design	
   classified?	
   What	
   are	
   the	
   distinguishing	
  
features	
  of	
  each?	
  Differentiate	
  by	
  giving	
  appropriate	
  examples	
  
8. What	
   do	
   you	
   mean	
   by	
   measurement?	
   Explain	
   four	
   key	
   levels	
   of	
  
measurement	
  with	
  suitable	
  examples	
  and	
  also	
  give	
  details	
  of	
  what	
  
statistical	
  technique	
  can	
  be	
  used	
  with	
  data	
  from	
  each	
  type	
  of	
  scale?	
  
9. What	
   is	
   scaling?	
   Describe	
   the	
   various	
   comparative	
   and	
   non	
  
comparative	
   scaling	
   techniques	
   used	
   in	
   business	
   research	
   with	
  
suitable	
  examples	
  
10. How	
  do	
  you	
  edit	
  a	
  questionnaire?	
  What	
  are	
  the	
  precautions	
  that	
  a	
  
research	
  must	
  take	
  while	
  editing	
  and	
  coding	
  a	
  questionnaire?	
  Give	
  
suitable	
  example	
  
11. Explain	
   various	
   Parametric	
   and	
   Non	
   Parametric	
   Test	
   with	
  
examples	
  
12. Discus	
  the	
  various	
  types	
  of	
  research	
  and	
  their	
  features	
  
13. Find	
   the	
   correlation	
   of	
   coefficient	
   for	
   the	
   following	
   data	
   and	
  
comment	
  on	
  its	
  significance?	
  	
  
X	
   24	
   26	
   36	
   35	
   43	
   45	
   47	
  
Y	
   47	
   48	
   54	
   58	
   59	
   59	
   65	
  
	
  
14. Perform	
   ANOVA	
   with	
   5%	
   level	
   of	
   significance	
   to	
   determine	
  
whether	
  there	
  is	
  a	
  significant	
  difference	
  in	
  the	
  mean	
  speed	
  of	
  four	
  
different	
  machines	
  
Hours	
   Machine	
  A	
   Machine	
  B	
   Machine	
  C	
   Machine	
  D	
  
1	
   15	
   14	
   30	
   35	
  
2	
   20	
   16	
   25	
   30	
  
3	
   25	
   22	
   24	
   32	
  
4	
   20	
   28	
   26	
   28	
  
	
  
15. From	
   the	
   data	
   given	
   below	
   about	
   the	
   treatment	
   of	
   patients	
  
suffering	
  from	
  cold,	
  state	
  whether	
  the	
  new	
  treatment	
  is	
  superior	
  to	
  
that	
   of	
   the	
   conventional	
   treatment.	
   You	
   can	
   use	
   Kai2	
   test	
   for	
  
evaluation	
  
Treatment	
   Favorable	
   Not	
  Favorable	
  
New	
   280	
   60	
  
Conventional	
   120	
   40	
  
Paper1: Research Methodology Exam Sheet
	
  
Shivananda	
  R	
  Koteshwar,	
  PhD	
  Research	
  Scholar,	
  Bangalore	
  University	
  
24	
  
	
  
16. Calculate	
  the	
  straight	
  line	
  trend	
  for	
  the	
  following	
  data	
  and	
  forecast	
  
the	
  production	
  figures	
  for	
  the	
  next	
  two	
  years	
  
Year	
   2006	
   2007	
   2008	
   2009	
   2010	
   2011	
   2012	
   2013	
  
Production	
   43	
   67	
   34	
   76	
   71	
   85	
   88	
   96	
  
	
  
17. A	
  cooperative	
  wishes	
  to	
  test	
  whether	
  the	
  preference	
  of	
  consumers	
  
for	
  its	
  products	
  its	
  dependent	
  on	
  income	
  levels.	
  Use	
  the	
  Chi	
  square	
  
test	
  to	
  decide.	
  You	
  may	
  use	
  a	
  5%	
  significance	
  level	
  
Product	
  Preferred	
  
Income	
  
Product	
  A	
   Product	
  B	
   Product	
  C	
   Product	
  D	
  
Low	
   185	
   45	
   95	
   325	
  
Medium	
   65	
   40	
   75	
   180	
  
High	
   35	
   25	
   70	
   130	
  
Total	
   285	
   110	
   240	
   635	
  
	
  

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Paper 1 Phd Course Work- Research Methodology Exam

  • 1. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   1   Paper  1  Exam  Sheet   Research  Methodology  and  Statistics   Shivananda  R  Koteshwar   TITLE:  A  Study  on  Pragmatic  Approaches  and   Quality  Initiatives  for  Enhancing  Teachers’   Caliber  in     Post  Graduate  Institutes  offering  MBA   Programme  under  Bangalore  University       Under  the  Guidance  of       Dr.  T.V.  Raju   Director,  RV  Institute  of  Management,  Bangalore   CANARA  BANK  SCHOOL  OF  MANAGEMENT  STUDIES   BANGALORE  UNIVERSITY  
  • 2. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   2   RESEARCH METHODOLOGY Life cycle of Research.................................. 3 Scientific Research..................................... 3 Research Process........................................ 4 Research Report......................................... 5 Good measurement characteristics........................ 7 Research Problem........................................ 8 Hypothesis.............................................. 8 Case Study............................................. 11 Sampling............................................... 11 Data Preparation Process............................... 12 STATISTICS   Characteristics of a statistical data.................. 13 Arithmetic Mean........................................ 13 Median................................................. 14 Mode................................................... 14 Standard Deviation and Variance........................ 14 Coefficient of Variation............................... 15 Range and Coefficient of Range......................... 15 Trend Analysis (Straight Line Analysis)................ 15 Standard Normal Curve (SNC)............................ 16 Non parametric test – (χ2) kai2 test ................... 16 ANNOVA – Analysis of Variance.......................... 17 Coefficient of Correlation............................. 20 Regression............................................. 20 Small Sample Test...................................... 21 IMPORTANT QUESTIONS  
  • 3. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   3   Life cycle of Research • Hypothesis,   Prediction,   Formulation   of   question,   Sampling,   Experimentation,   Observation,   Recording,   Measurement,   Analyzing,   Formulation,  Testing,  Modification  and  Conclusion     Types of Research (PAD DEEA) (ASHE) • Either  based  on  Intent  or  based  on  method   • Intent  Based:  Pure,  Applied,  Exploratory,  Action,  Descriptive,  Diagnostic,   Evaluation     • Method   Based:   Experimental,   Analytical/Statistical,   Historical,   Survey/Fact  Finding       o Pure:  Undertaken  for  the  sake  of  knowledge  without  any  intention   to  apply  it  in  practice.  Aims  at  extension  of  knowledge   o Applied:  Problem  oriented  and  action  directed.  Gives  conceptual   clarity     o Exploratory:   Formulative   Research.   Study   of   an   unfamiliar   problem   about   which   the   researcher   has   little   or   no   knowledge.   Usually  takes  the  form  of  a  pilot  study   o Descriptive:   Fact   finding   investigation.   More   specific   than   exploratory  research.     o Diagnostic:   Similar   to   descriptive   but   with   a   different   focus.   Directed   towards   discovering   what   is   happening,   why   is   it   happening  and  what  can  be  done  about   o Evaluation:   Type   of   Applied   research.   Made   for   assessing   the   effectiveness  of  social  or  economic  programmes  implemented     o Action:  It’s  a  type  of  evaluation  study.  It  is  a  concurrent  evaluation   of   an   action   programme   launched   for   solving   a   problem   for   improving  an  existing  situation   o Experimental:  Assessing  the  effects  of  a  particular  variables  on  a   phenomenon  by  keeping  the  other  variables  constant  or  controlled   o Analytical:   Known   as   Statistical   Method.   System   of   procedures   and  techniques  of  analysis  applied  to  a  quantitative  data   o Historical:  Study  of  past  records.  Tries  to  discover  the  trends  in   the  past   o Survey:   Fact   finding   study.   Purpose   is   to   provide   information,   explain   phenomenon   to   make   comparisons   and   concerned   with   cause  and  effect  relationships     Scientific Research • A   method   or   procedure   consisting   of   systematic   observation,   measurement,   and   experiment,   and   the   formulation,   testing,   and   modification  of  hypotheses”   • Requires  replication,  external  review  and  data  recording  &  sharing   • The  key  elements  of  scientific  research  (articles  of  faith)  are      
  • 4. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   4   o Ethical  neutrality  (Eliminate  personal  opinion)   o Reliance  on  empirical  Evidence     o Use  of  relevant  concept   o Commitment  of  Objectivity   o Generalization   o Validity  &  Reliability   o Logical  Reasoning  process   • Scientific  research  method  is  inquiry  based  on  empirical  and  measurable   evidence  subject  to  specific  principles  of  logic  reasoning   • Effective  Methodology:  Question    Observe    Hypothesis    Prediction     Test    Analyze    Interpret    Publish    Retest   Research Process • Research  Area/Theme/Problem/Idea   • Tentative  hypothesis   • Literature  Review   • Research  Title/Topic   • Research  Questions   • Research  Proposal   o Need  for  study   o Limitation  of  Research   o Scope  of  Research   o Budget   o Responsibilities  and  Obligations  of  stake  holders   o Place  and  Period  of  study   • Research  Proposal  Approval   • Objectives   • Hypothesis   • Operational  definition   • Research   Method/   Research   Design   (Type,   Purpose,   Timeframe,   Scope   and  environment)   o Research  Type    Experimental,  Historical  and  Inferential  Designs    Exploratory,  Descriptive  and  Causal  Designs    Experimental  and  Post  facto    Historical  method,  Case  study,  Clinical  Study    Sample  Surveys,  Field  studies,  Experiments  in  field  settings,   Laboratory  experiments    Exploratory,  Descriptive,  Experimental  studies    Exploratory,  Descriptive,  Casual    Experimental,  Quasi-­‐Experimental  Designs    True   Experimental,   Quasi-­‐Experimental   and   Non   experimental  designs    Experimental,   Pre-­‐Experimental,   Quasi-­‐Experimental   designs,  Survey  Research   o Research  question  or  purpose   o Research  timeframe   o Data  Collection  Design  
  • 5. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   5    Variables    Data  collection  methods   o Sampling  Design    Sample  Population  and  Sampling  Size    Sample  Distribution  Decision    Sampling  Method/Technique    Sampling  Unit/Frame   o Instrument  Development    Introduction  and  Instructions  for  participants    Target  Questions  (AIM)   • Administrative  Questions   • Investigative  questions   • Measurement  Questions    Preliminary  Analysis  plan   o Pilot  testing   • Data  collection  and  preparation   • Data  Analysis     o Findings  (Testing  of  hypothesis)   o Interpretation  and  Conclusions   • Report  writing  /  Research  Reporting     Note:   Research   type   is   categorized   based   on   the   different   perspectives   from   which  any  given  study  can  be  viewed.  They  are:   • The  degree  of  formulation  of  the  problem  (Exploratory  or  Formalized)   • The   topical   scope-­‐breadth   and   depth   of   the   study   (Case   or   statistical   study)   • The   research   environment   (Field   Setting/Survey   or   laboratory   experiment)   • The  time  dimension  (one-­‐time  or  longitudinal)   • The  mode  of  data  collection  (Observational  or  survey)   • The  nature  of  relationship  among  variables  (Descriptive  or  casual)   Research Report   Broad  Divisions   Individual  Sections   Title  of  Report   Table  of  Contents     Preliminary  material   Abstract/Synopsis   Introduction   Literature  Review   Methodology   Results   Discussion   Conclusion   Body  of  report   Recommendations   References  or  Bibliography  Supplementary   material   Appendices  
  • 6. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   6   Levels of Measurement / Measurement Scales (NOIR)  (ODO)   • Nominal:   Consists   of   assigning   numerals   or   symbols   to   different   categories  of  a  variable.  They  are  just  like  labels  and  have  no  quantitative   value.  E.g.:  Male  and  Female  applicants  of  a  MBA  program   • Ordinal:  Persons  or  objects  are  assigned  numerals,  which  indicate  ranks   with  respect  to  one  or  more  properties  either  in  ascending  or  descending   order.   E.g.:   Ranking   of   individual   based   on   socio-­‐economic   class,   which   might  be  a  combination  of  income,  education,  occupation  and  wealth   • Interval:   It’s   ranking   with   equality   in   distance.   So   it’s   not   possible   to   multiply  or  divide  the  numbers  on  an  interval  scale.  E.g.:  The  centigrade   temperature   gauge.   A   temperature   of   50degrees   is   exactly   10   degrees   hotter  than  40  degrees  and  10  degrees  cooler  than  60  degrees   • Ratio:   This   has   absolute   zero   point.   Since   there   is   natural   zero,   it   is   possible  to  multiply  and  divide  the  numbers  on  a  ratio  scale.  E.g.:  Height,   weight,  distance  and  area   MEASUREMENT   ORDER   DISTANCE   ORIGIN   STATISTICAL   TOOL  USED   SCALES  USED   Nominal   NO   NO   NO   None   Simple  Category,   Multiple  choice,   Single  Response,   Multiple  Choice,   Multiple   response,  Graphic   Rating  scale   Ordinal   YES   NO   NO   Median,  Rank   order   correlation   coefficient   Stapel  Scale   Interval   YES   YES   NO   Standard   Deviation,   Product   Moment   correlation,  “t”   tests,  “F”  tests   Likert  scale   summated  Rating,   Semantic   Differential  Scale,   Numerical  Scale,   Multiple  rating   list  scale,  Staple   scale,  Graphic   Rating  scale   Ratio   YES   YES   YES   Standard   Deviation,   Product   Moment   correlation,  “t”   tests,  “F”  tests,   Geometric   Mean,   Coefficient  of   variation   Constant  sum   scale,  Graphic   Rating  Scale  
  • 7. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   7   • The  measurement  scales,  commonly  used  in  marketing  research,  can  be   divided  based  on  number  of  dimensions:     o Comparative  and  Non  comparative  scales    Comparative   scales   involve   the   respondent   in   signaling   where   there   is   a   difference   between two   or   more   producers,   services,   brands   or   other   stimuli.   Examples   of   such   scales   include;   paired   comparison,   dollar   metric,   unity-­‐sum-­‐gain  and  line  marking  scales.      Non-­‐comparative   scales,   described   in   the   textbook,   are;   continuous   rating   scales,   line-­‐marking   scales,   itemized   rating  scales,  semantic  differential  scales  and  Likert  scales.   o Uni-­‐dimensional  Scale  and  Multi-­‐dimensional  scale   o Balanced  or  unbalanced  scale   o Forced  or  Un  forced  choice  scale   o Simple  Category  scale  (Dichotomous  scale),  Multiple  choice  single   response   scale   and   Multiple   choice   Multiple   response   scale   (multiple  choice  scale)   o Likert   scale   (Summated   rating   scale)   and   Semantic   Differential   Scale  (SD  Scale)   SCALE   MEASUREMENT   Simple  Category  Scale   Nominal   Multiple  Choice  Single  Response  Scale   Nominal   Multiple  Choice  Multi  Response  Scale   Nominal   Likert  Scale  summated  rating   Interval   Semantic  Differential  Scale   Interval   Numerical  Scale   Ordinal  or  Interval   Multiple  Rating  List  scale   Interval   Constant  Sum  Scale   Ratio   Stapel  Scale   Ordinal  or  Interval   Graphic  Rating  Scale   Ordinal  or  Interval  or  Ratio       Good measurement characteristics • Uni-­‐dimensionality   • Linearity   • Validity:  (ConPreCon)     o Validity   refers   to   how   effective   an   instrument   is   in   measuring   a   property  it  intends  to  measure.     o Three   types   of   validity   are   Content   Validity   (Face   Validity   and   Sampling  Validity),  Predictive  Validity  and  Construct  Validity   o Content   Validity-­Face   Validity:   Subjective   evaluation   of   a   measuring  scale.  E.g.  a  researcher  may  develop  a  scale  to  measure   consumer  attitude  towards  a  brand  and  pre-­‐test  the  scale  among  a   few   experts.   If   the   researchers   are   satisfied,   the   researcher   may   conclude  that  the  scale  has  face  validity   o Content   Validity   –   Sampling   Validity:   Refers   to   how   representative  the  content  of  the  measuring  instrument  is.  E.g.  If   attitude  is  the  characteristic  being  measured,  its  content  universe  
  • 8. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   8   may  comprise  statements  and  questions  indicating  which  aspects   of  attitude  need  to  be  measured.  This  is  also  based  on  judgment   o Predictive   Validity:   Refers   to   the   extent   to   which   one   behavior   can  be  predicted  based  on  another.  E.g.  In  the  case  of  admission   test  designed  for  prospective  MBA  students,  the  predictive  validity   of   the   test   would   be   determined   by   the   association   between   the   scores  on  the  test  and  the  grade  point  average  secured  by  students   during  the  first  semester  of  study.  Correlation  of  coefficient  can  be   computed   to   determine   the   predictive   validity   of   the   admission   test.   Predictive   validity   is   strong   if   correlation   of   coefficient   is   greater  than  0.5   o Construct  Validity:  Is  a  conceptual  equation  that  is  developed  by   the   researcher   based   on   theoretical   reasoning.   The   instrument   may  be  considered  to  have  construct  validity  only  if  the  expected   relationships  (between  variable  under  study  and  other  variables)   are  found  to  be  true   • Reliability   • Accuracy/Precision   • Simplicity   • Predictability   Research Problem • Sources   of   Choosing   a   Problem:   Review   of   literature,   academic   experience,   daily   experience,   exposure   to   field   situations,   consultations,   Brain  storming,  Research  and  Intuition   • Formulation  of  problem:   o Internal   Criteria:   Researcher’s   interest,   Researchers   competence   and  Researcher’s  own  resource   o External  Criteria:  Research  ability  of  the  problem,  Importance  and   urgency,  Novelty  of  the  problem,  Feasibility,  Facilities,  Usefulness   &  social  relevance  and  Research  personnel   • Criteria   for   good   research   problem:   Verifiable   evidence,   Accuracy,   precision,   systematization,   objectivity,   recording,   controlling   conditions   and  training  investigators   Hypothesis • Tentative  statement/assumption  asserting  a  relationship  between  certain   facts   • Its  intended  to  be  tested,  verified  or  rejected   • It   contains   variables   that   are   measurable   and   specifying   how   they   are   related   • Criteria   o Not  a  form  of  a  question   o Empirically  testable   o Specific  and  Precise   o Shouldn’t  be  contradictory  
  • 9. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   9   o Should  specify  variables  between  which  the  relationship  is  to  be   established   o Should  describe  only  one  relationship   • Nature  of  Hypothesis   o Accurately  reflect  the  relevant  sociological  fact   o Not  be  in  contradiction  with  approved  relevant  statements  of   other  scientific  disciplines   o Must  consider  the  experience  of  other  researchers   • Characteristics  of  Good  Hypothesis   o Conceptual  Clarity   o Specificity   o Testability   o Availability  of  techniques   o Theoretical  relevance   o Consistency   o Objectivity   o Simplicity   • Types:     o Null  Hypothesis  (H0)  If  we  are  to  compare  method  A  with  method   B  about  its  superiority  and  if  we  proceed  on  the  assumption  that   both  methods  are  equally  good,  then  this  situations  is  termed  as   null   hypothesis.   E.g.   If   we   want   to   test   the   hypothesis   that   the   population   mean   is   equal   to   the   hypothesis   mean   equal   to   100.   Then  null  hypothesis  would  be  H0  :µ=µ  H0  =  100   o Alternative  Hypothesis  (Ha)  If  our  sample  results  do  not  support   this   null   hypothesis,   we   should   conclude   that   something   else   is   true.  What  we  conclude  rejecting  the  null  hypothesis  is  known  as   alternative   hypothesis.   E.g.   For   the   same   example,   the   alternate   hypothesis  are:    Ha:  µ≠µ  H0    -­‐  Population  mean  is  not  equal  to  100    Ha:  µ>µ  H0    -­‐  Population  mean  is  greater  than  100    Ha:  µ<µ  H0    -­‐  Population  mean  is  lesser  than  100   • Level   of   Significance:   If   we   take   level   of   significance   as   5%,   then   this   implies  that  researcher  is  willing  to  take  as  much  as  5%  risk  rejecting  the   null  hypothesis  when  it  happens  to  be  true   • Decision   Rule   of   Test   of   Hypothesis:  Making   rule,   which   is   known   as   decision   rule   according   to   which   we   accept   Null   hypothesis   (rejecting   alternative   hypothesis)   or   reject   null   hypothesis   (accepting   alternative   hypothesis).  E.g.  If  Null  hypothesis  states  that  a  certain  lot  is  good  (less   defective  items)  and  alternate  hypothesis  is  that  the  lot  is  not  good  (many   defective  items).  In  this  case,  we  need  to  decide  the  number  of  items  to  be   tested   and   the   criterion   for   accepting   or   rejecting   the   hypotheses.   We   might  test  10  items  in  the  lot  and  plan  our  decision  saying  that  if  there  are   none   or   only   1   defective   item   among   the   10,   then   we   will   accept   Null   hypothesis   else   we   will   reject   Null   Hypothesis   (and   accept   alternative   hypothesis).  This  sort  of  basis  is  known  as  decision  rule   • Type   1   and   Type   2   Errors   (Type   1   error   is   also   called   as   level   of   significance  of  test)     DECISION  
  • 10. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   10     Accept  NULL   Reject  NULL   Null  Hypothesis  (TRUE)   Correct  Decision   Type  1  Error  (α  error)   Null  Hypothesis  (FALSE)   Type  II  Error  (β  error)   Correct  Decision     • Two  Tailed  Test  and  One  Tailed  Test:     o Two   tailed   test   rejects   the   Null   hypothesis   if,   we   say,   the   sample   mean   is   significantly   higher   or   lower   than   the   hypothesized  value  of  the  mean  of  the  population   o One  tailed  test:  When  we  have  to  say  the  population  mean  is   either  lower  than  or  higher  than  some  hypothesized  value     • Testing  Hypothesis:   o Make   a   formal   statement   -­‐   State   NULL   hypothesis   as   well   as   ALTERNATIVE  hypothesis   o Specify  the  level  of  significance   o Decide  the  correct  sampling  distribution   o Decide  the  sampling  distribution  to  use   o Sample  a  random  sample  and  workout  an  appropriate  value   o Calculate  the  probability  that  sample  result  would  diverge  as   widely   as   it   has   from   expectations,   if   NULL   hypothesis   were   true   o Compare  the  probability  -­‐  If  the  probability  equal  to  or  smaller   than   the   Alpha   value   in   case   of   one   tailed   test   or   equal   to   Alpha/2  in  case  of  two-­‐tailed  test,  reject  NULL  hypothesis  else   accept  NULL  hypothesis   • Tests  of  Significance  or  Tests  of  Hypothesis:   o Parametric  Tests  (Standard  Tests)  –  Assume  certain  properties   of   the   parent   population   from   which   we   draw   samples.   E.g.   sample  size,  population  parameters  like  mean,  variants  etc.  All   tests  are  based  on  the  assumption  of  normality  (Source  of  data   is  considered  to  be  normally  distributed)   o Non  Parametric  Test  or  Distribution  (Free  test  of  hypothesis)  –   Statistical  method   o Important  Parametric  tests    z-­Test:     Used   generally   for   comparing   the   mean   of   a   sample  to  some  hypothesis  mean  for  the  population  in   case   of   large   sample,   or   when   population   variance   is   known.  Based  on  normal  probability  distribution  and  is   used   to   judging   the   significance   of   several   statistical   measures,   particularly   the   mean.   Test   is   also   used   for   both  binomial  distribution  and  t-­‐distribution.    t-­test:   Used   in   case   of   small   sample   when   population   variance   is   unknown.   Based   on   t-­‐distribution   and   is   considered   an   appropriate   test   for   judging   the   significance  of  sample  mean  or  for  judging  significance   of   difference   between   the   two   means   of   the   two   samples.    x2   test:   Used   for   comparing   a   sample   variance   to   a   theoretical   population   variance   is   unknown.   Based   on   chi-­‐square  distribution    
  • 11. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   11    f-­test:   Used   to   compare   the   variance   of   the   two   independent   samples.   This   test   is   also   used   in   the   context  of  variance  (ANOVA)  for  judging  the  significance   of  more  than  2  sample  means  at  the  same  time  and  also   for  judging  the  significance  of  multiple  coefficients.  This   is  based  on  f-­‐distribution   Case Study • Case  study  is  a  method  of  exploring  and  analyzing  the  life  of  a  social  unit   or  entity,  be  it  a  person,  a  family,  an  institution  or  a  community   • The   aim   of   case   study   method   is   to   locate   or   identify   the   factors   that   account  for  the  behavior  patterns  of  a  given  unit  and  its  relationship  with   the  environment   • It   depends   upon   the   wit,   commonsense   and   imagination   of   the   person   doing  the  case  study.   • Efforts   should   be   made   to   ascertain   the   reliability   of   life   history   data   through   examining   the   internal   consistency   of   the   material.   A   judicious   combination  of  techniques  of  data  collection  is  a  prerequisite  for  securing   data  that  are  culturally  meaningful  and  scientifically  significant   • In-­‐depth   analysis   of   selected   cases   is   of   particular   value   to   business   research  when  a  complex  set  of  variables  may  be  at  work  in  generating   observed   results   and   intensive   study   is   needed   to   unravel   the   complexities   Sampling • A  part  of  the  population  is  known  as  sample.  The  method  consisting  of  the   selecting   for   study,   a   portion   of   the   universe   with   a   view   to   draw   conclusions  about  the  universe  or  population  is  known  as  sampling   • Census  (Total  Population)    Target  Population  (Whom  we  are  concerned   with)    Sample  Frame  (Criteria  through  which  we  will  be  selecting)     Sample  Unit  (Categories)    Sample  Element    Sample  Size   • Sample  size  depends  on   o Variability  of  population  (standard  deviation)  –Can  be  found  out   by  Pilot  study   o Confidence  attached  to  the  estimate    (Confidence  Interval)   o Allowable  error  or  margin  of  error  (Tolerable  Error)   • Sample  Size   o Determining  Sample  size  in  case  of  continuous  and  interval  scale    n   =   (Z2   (Std   Dev)2   )   /   (e2)   where   Z   =   Value   of   given   confidence  interval,  n  =  sample  size,  Std  Dev  =  Range/6  and   Range=  Max  Value  -­‐1   o For  Dichotomy  questions    n   =   (Z2   (pq   ))   /   (e2)   where   p=probability   of   success   (frequency  of  people  saying  yes)    If  p  is  not  known,  then  n  =  (¼)(Z2    /  (e2)    
  • 12. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   12   • Sample  Techniques   o Non  Probabilistic:  Convenience  (Accidental),  Judgmental  (Expert   Opinion   or   Purposive),   Quota,   Snowball   (Going   through   references)   o Probabilistic:  Simple  Random,  Systematic  Sample  (E.g.:  Every  5th,   11th,  16th  etc),  Stratified  (homogenous),  Cluster  (Heterogeneous)   o Stratified  can  be  either  proportionate  or  disproportionate     o In  scientific  research  only  probabilistic  sampling  technique  need  to   be  used   o Quota  vs.  Stratified    Quota  is  non  probabilistic  and  Stratified  is  probabilistic    Both   are   homogeneous   within   Quota/Strata   and   heterogeneous  across  Quota/Strata    Both  are  2-­‐stage  process.  In  first  step  Quota  and  Stratified   are   same.   Once   its   Quota   or   stratified,   next   step   would   employ   different   methods.   In   Quota   it   would   be   non   probability   method   and   in   Stratified,   it   would   be   probabilistic     • Quota:   Convenience,   Judgmental   or   Snow   ball   sampling   • Stratified:  Simple  Random  or  Systematic  Random     o Cluster  vs.  Stratified    Heterogeneity   within   Cluster   and   Homogenous   across   cluster      Homogeneous   within   Strata   and   heterogeneous   across   Strata   o Multi   stage   sampling:   Cluster      Stratified      Systematic/Simple   Random   Data Preparation Process • Check  Questionnaire:  Edit,  Code,  Transcribe,  Clean   • Statistically  Adjust  data  /  Statistical  Analysis.  The  two  types  are:   o Descriptive  (Data)   o Inferential  (Hypothesis)        
  • 13. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   13     STATISTICS Distribution: o Normal  Distribution   o Frequency  Distribution  (Poisson,  Binomial,  Normal)   • Discrete  Frequency  Distribution   x   f   74   4   83   3   93   8   • Continuous  Frequency  Distribution   x   f   0-­‐10   4   10-­‐20   3   20-­‐30   8     o For  more  Probability  Distribution:   http://en.wikipedia.org/wiki/Probability_distribution Characteristics of a statistical data • Central  Tendency:  Measured  by  statistical  averages   o Mathematical  Average:  Arithmetic  Mean,  Geometric  Mean,   Harmonic  Mean   o Positional  Average:  Median,  Mode   • Dispersion   • Skewness   • Kurtosis   Arithmetic Mean o AM=∑X/N  where  ∑X  =  Sum  of  the  item  and  N  is  the  number  of  items   o If   frequency   is   given,   then   AM=∑fx/∑f   where   ∑fx   =   sum   of   the   values   multiplied  by  the  corresponding  frequency  and  ∑f    is  sum  of  frequency     o Arithmetic  mean  of  58,67,68,84,93,98,100    ∑X    =  58+67+68+84+93+98+100  =  560    N  =  number  of  items  =  7    AM  =  ∑X/N    =  560/7  =  80     o Arithmetic  mean  of  following  50  workers  according  to  their  daily  wages    Daily  Wage:  15,  18,  20,  25,  30,  35,  40,  42,  45    Number  of  workers:  2,  3,  5,  10,  12,  10,  5,  2,  1   Wages   (x)   Frequency  (F)   fx   15   2   30  
  • 14. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   14   18   3   54   20   5   100   25   10   250   30   12   360   35   10   350   40   5   200   42   2   84   45   1   45    ∑fx    =  473  and  ∑f    =  50    AM  =∑fx/∑f    =  473/50  =  29.46     o Arithmetic  mean  for  the  following  distribution    Marks  10-­‐20  20-­‐30  30-­‐40  40-­‐50  50-­‐60  60-­‐70  80-­‐90    Number  of  students:  6  12  18  20  20  14  8  2   Marks   Frequency  (F)   Mid  Value  (x)   Mean   fx   10-­‐20   6   15   90   20-­‐30   12   25   300   30-­‐40   18   35   630   40-­‐50   20   45   900   50-­‐60   20   55   1100   60-­‐70   14   65   910   70-­‐80   8   75   600   40-­‐90   2   85   170      ∑fx    =  4700  and  ∑f    =  100    AM  =  =∑fx/∑f    =  4700/100  =  47   Median • Size  of  the  middlemost  value   • 80,  86,  74,  465,  3,  984,  22:  Median  is  465   • Median  of  Indian  age  is  26  means,  50%  of  India’s  population  will  be  less   than  26years  of  age  and  50%  will  be  more  than  26yrs  of  age   Mode • Most  occurring  number   Standard Deviation and Variance o Deviation  from  Mean   o It’s  a  relative  number  and  not  an  absolute  number   o Lesser  the  Standard  Deviation,  higher  the  reliability   o σ  =  √(∑(x-­‐xb)2  /  N)   x   (x-­‐xb)2    15    64   20   9   22   1   28   25  
  • 15. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   15   30   49   ∑x  =  115     ∑(x  –xb)2  =  148   • xb  =  ∑x/N    =  115/5  =  23   • σ  =  √(148/5)  =  5.44   • Variance  =  σ2  =  29.59     Coefficient  of  Variation   • Lesser  the  confidence  of  variation,  the  reliability  is  higher   • V  =  σ  /xb*100   • For  the  above  example,  it  would  be  equal  to  5.44/23*100  =  23.65   • Lesser  the  CV,  higher  the  reliability   Range  and  Coefficient  of  Range   • Range  =  L-­‐S   • Coefficient  of  Range  =  (L-­‐S)/(L+S)   Trend Analysis (Straight Line Analysis) • Least  Square  Method  (Forecasting  Method)   Year   Sales   (y)   year-­midyear   x   x2   xy   yc   bx  +  a   2006   42   -­‐3.5   12.25   -­‐147   36.11   2007   40   -­‐2.5   6.25   -­‐100   41.97   2008   36   -­‐1.5   2.25   -­‐54   47.83   2009   58   -­‐0.5   0.25   -­‐29   53.69   2010   62   0.5   0.25   31   59.55   2011   60   1.5   2.25   90   65.41   2012   70   2.5   6.25   175   71.27   2013   80   3.5   12.25   280   77.13     ∑y=453   ∑x=0   ∑x2=42   ∑xy  =  246   ∑yc  =452.96     • Mid  year  =  2009.5   • Deviation  from  Arithmetic  mean  will  be  least  in  this  method,  hence  its   called  least  square  method   • yc  =  bx  +  a   • ∑y  =  b∑x  +  Na     • ∑y  =  b  (0)+  Na  =  Na   • a  =  ∑y  /N   • a  =  453/8  =  56.62   • ∑xy  =  a∑x  +  b∑x  2   • 246=  56.62  (0)  +  b  (42)   • b  =  5.86   • Forecast  for  2014,  x  =  4.5   o yc  =  bx  +  a   o yc  =  5.86  (4.5)  +  56.62  =  82.99  
  • 16. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   16   • Forecast  for  2015,  x  =  5.5   o yc  =  bx  +  a   o yc  =  5.86  (5.5)  +  56.62  =  88.85   • ∑yc  =  ∑y    (Verification  Technique)   Standard  Normal  Curve  (SNC)   1. Assume  mean  height  of  soldier  is  68.22  inches  with  a  variance  of  10.8   inches.  How  many  soldiers  in  a  regiment  of  1000  would  you  expect  to   be  over  6ft  tall   • σ  2  =  10.8   • σ  =  3.29   • x  =  6  feet  =  72  inches   • xb  =  68.22  (mean)   • z  =  SNC  =  (x-­‐xb)/σ    =  (72-­‐68.22)/3.29  =  1.15     • From  the  Statistical  Table  for  1.15  its  =>  0.5  –  0.3759  =  0.1251   • 0.1251*1000  =125  soldiers  are  taller  than  1000     2. 1000  light  bulbs  with  a  mean  life  of  120  days  are  installed  in  a  new   factory.  They  have  length  of  life  is  normally  distributed  with  Standard   deviation  of  20  days.  How  many  bulbs  will  expire  in  less  than  90  days?   How  many  bulbs  will  burn  for  more  than  125  days?   • N  =  1000   • xb  =  120   • σ  =  20   • x  =90   • Z  =  SNC  =  (x-­‐xb)/σ  =  (90-­‐120)/20  =  -­‐1.5     • From  the  statistical  table  for  -­‐1.5  its  =>  0.5  -­‐0.4332  =  0.0668   • 0.0668*1000  =  67  Bulbs     • N  =  1000   • xb  =  120   • σ  =  20   • x  =125   • Z  =  SNC  =  (x-­‐xb)/σ  =  (125-­‐120)/20  =  0.25     • From  the  statistical  table  for  0.25  its  =>  0.5  -­‐0.0987  =  0.4013   • 0.4013*1000  =  401  bulbs   Non parametric test – (χ2) kai2 test o χ2     =   kai2     =   ∑   (O-­‐E)2/E2       where   O   =   Observed   Frequency   and   E   =   Expected  frequency   o In   a   certain   area   in   Bangalore,   the   corporation   distributed   pills   to   combat  CG.  From  the  data  given  below  analyze  whether  the  pills  given   were  effective  or  not  in  combating  the  disease  
  • 17. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   17     Fell  Ill   Not  Ill   Took  Pills   345   620   Dint  take   pills   545   450     o Null  Hypothesis:  Given  pills  are  not  effective  in  controlling  the  said   disease     Table  of  Observed  Frequency  (O)   345   620   965  (Row  1  Total)   545   450   995  (Row  2  Total)   890  (Column1  Total)   1070  (Column  1   Total)   1960  (Grand   Total)     • E  =  (RT  *  CT)  /  GT     • Table  of  Expected  Frequency  (E)     • E345  =  965*890  /  1960  =  438.19   • E620  =  965*1070  /  1960  =  526.81   • E545  =  995*890  /  1960  =  451.81   • E450  =  995*1070/  1960  =  543.19     438.19   526.81   965     451.81   543.19   995     890     1070     1960       O   E   (O-­E)2/E2   345   438.19   0.045   545     451.81   0.042   620   526.81   0.032   450   543.19   0.029       ∑  (O-­‐E)2/E2      =   0.148     • χ2  =  Kai2  =  0.148   • Degree  of  freedom    =  (r-­‐1)  (c-­‐1)  =  (2-­‐1)(2-­‐1)  =  1   • Taking  the  significance  level  to  be  5%  (Confidence  level  as  95%),   from  the  statistical  table,  we  can  find  that  the  table  value  is  3.84   • As   calculated   hypothesis   =   0.1484   is   less   than   the   table   value   of   3.84,  Null  hypothesis  is  accepted   ANNOVA – Analysis of Variance 1. 5   salesmen   work   in   4   cities.   Based   on   the   data   given   determine   whether  there  is  a  significance  difference  in  the  sales  performance  of   different  cities   Salesmen   A   B   C   D   S1   14   12   13   15   S2   15   14   12   11  
  • 18. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   18   S3   16   17   15   10   S4   12   16   15   14   S5   10   11   15   17     • Null  Hypothesis:  There  is  no  significance  difference  in  the  sale   performance  of  different  cities     X1   X2   X3   X4     14   12   13   15     15   14   12   11     16   17   15   10     12   16   15   14     10   11   15   17   ∑X   67   70   70   67   Xb  =  ∑X/N  (N=5)   13.4   14   14   13.4     • Grand  Mean  =  Xbb  =  ∑Xb/N  =  (13.4  +  14  +  14  +  13.4)/4  =  13.7     • Variance  between  samples     (X1b-­ X1bb)2   (X2b-­ X2bb)2   (X3b-­ X3bb)2   (X4b-­X4bb)2     0.09   0.09   0.09   0.09     0.09   0.09   0.09   0.09     0.09   0.09   0.09   0.09     0.09   0.09   0.09   0.09     0.09   0.09   0.09   0.09   ∑   0.45   0.45   0.45   0.45     • Sum  of  Squares  =  0.45  +  0.45  +  0.45  +  0.45  =  1.8   • Degree  of  Freedom  (d.f)  γ1    =  4  -­‐1  =  3     • Mean  of  sum  of  squares  =  1.8/3  =  0.6     • Variance  within  samples     (X1-­X1b)2   (X2-­X2b)2   (X3-­X3b)2   (X4-­X4b)2     0.36   4   1   2.56     2.56   0   4   5.76     6.76   9   1   11.56     1.96   4   1   0.36     11.56   9   1   12.96   ∑   23.2   26   1   33.2     • Sum  of  Squares  =  23.2  +  26  +  1  +  33.2  =  90.4   • Degree  of  Freedom  (d.f)  γ2  =  Total  number  of  observations  –  Number   of  samples  =  (5*4)  –  4  =  16     • Mean  of  sum  of  squares  =  90.4/16  =  5.65   •   • “f”  test  (Fisher)  for  5%  significance  level   • f  test  =  F=  (variation  between  samples)/(variation  within  samples)  =   0.6/5.65  =  0.106     • From  the  table,  m=γ1  and  n=γ2  ,  m=3  and  n=16,  value  of  F=3.2389  
  • 19. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   19     • Calculated  value  F=0.106  is  less  than  the  table  value  3.2389  so  Null   Hypothesis  is  accepted     2. 5   salesmen   work   in   4   cities.   Based   on   the   data   given   determine   whether   there   is   a   significance   difference   between   the   sales   performance  of  different  salesmen   Salesmen   A   B   C   D   S1   14   12   13   15   S2   15   14   12   11   S3   16   17   15   10   S4   12   16   15   14   S5   10   11   15   17         S1   S2   S3   S4   S5   City1   14   15   16   12   10   City2   12   14   17   16   11   City3   13   12   15   15   15   City4   15   11   10   14   17   ∑X   54   52   58   57   53   Xb=∑X/N  (N=4)   13.5   13   14.5   14.25   13.25     • Grand  Mean  =  Xbb  =  ∑Xb/N  =  (13.5  +  13  +  14.5  +  14.25  +  13.25)/5=   13.7     • Variance  between  samples     (X1b-­X1bb)2   (X2b-­X2bb)2   (X3b-­ X3bb)2   (X4b-­ X4bb)2   (X5b-­ X5bb)2     0.04   0.49   0.64   0.3   0.2     0.04   0.49   0.64   0.3   0.2     0.04   0.49   0.64   0.3   0.2     0.04   0.49   0.64   0.3   0.2   ∑   0.16   1.96   2.56   1.2   0.8     • Sum  of  Squares  =  0.16  +  1.96  +  2.56  +  1.2  +  0.8    =  6.68   • Degree  of  Freedom  (d.f)  γ1    =  5  -­‐1  =  4     • Mean  of  sum  of  squares  =  6.68/4  =  1.67     • Variance  within  samples     (X1-­X1b)2   (X2-­X2b)2   (X3-­X3b)2   (X4-­X4b)2   (X5-­X5b)2     0.25   4   2.25   5.06   10.56     2.25   1   6.25   3.06   5.06     0.25   1   0.25   0.56   3.06     2.25   4   20.25   0.06   14.06   ∑   5   10   29   8.74   32.74     • Sum  of  Squares  =  5  +  10  +  29  +  8.74  +  32.74  =  85.48   • Degree  of  Freedom  (d.f)  γ2  =  Total  number  of  observations  –  Number   of  samples  =  (5*4)  –  5  =  15    
  • 20. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   20   • Mean  of  sum  of  squares  =  85.48/15  =  5.7   •   • “f”  test  (Fisher)  for  5%  significance  level   • f  test  =  F=  (variation  between  samples)/(variation  within  samples)  =   1.67/5.7  =  0.29     • From  the  table,  m=γ1  and  n=γ2  ,  m=4  and  n=15,  value  of  F=3.0556     • Calculated  value  F=0.29  is  less  than  the  table  value  3.0556  so  Null   Hypothesis  is  accepted   Coefficient of Correlation • Carls  Coefficient  Method   • r  =    ∑xy  /  (√(∑x2  *  ∑y2)  where  x  =  X-­‐Xb  and  y  =  Y-­‐Yb     • Calculate  the  coefficient  of  correlation  for  the  following  value   X   Y   24   16   36   22   32   34   38   48   40   60       X   Y   x=X-­‐Xb     y=Y-­‐Yb     x2   y2   xy     24   16   -­‐10   -­‐20   100   400   200     36   22   +2   -­‐14   4   196   -­‐28     32   34   -­‐2   -­‐2   4   4   4     38   48   4   4   16   144   48     40   60   6   6   36   576   144   ∑   170   180       160   1320   368     • Xb  =  ∑X/N  =  170/5  =  34   • Yb  =  ∑Y/N  =  180/5  =  36   • r  =    ∑xy  /  (√(∑x2  *  ∑y2)    =  368/(√(160*1320)  =  0.8   Regression o x  on  y    X-­‐Xb=  bxy  (Y-­‐Yb)    bxy  =  ∑xy  /  ∑y2     o y  on  x    Y-­‐Yb=  byx  (X-­‐Xb)     byx  =  ∑xy  /  ∑x2     o Calculate  the  regression  for  the  following  table     X   Y   32   12   48   15   24   18  
  • 21. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   21   26   25   30   20       X   Y   x=X-­‐Xb     y=Y-­‐Yb     x2   y2   xy     32   12   -­‐0   -­‐6   0   36   0     48   15   16   -­‐3   256   9   -­‐48     24   18   -­‐8   0   64   0   0     26   25   -­‐6   7   36   49   -­‐42     30   20   -­‐2   2   4   4   -­‐4   ∑   160   90       360   98   -­‐94     • Xb  =  ∑X/N  =  160/5  =  32   • Yb  =  ∑Y/N  =  90/5  =  18     • x  on  y   • bxy  =  ∑xy  /  ∑y2    =  -­‐94/  98  =  -­‐  0.96   • X-­‐Xb=  bxy  (Y-­‐Yb)   • X-­‐32  =  -­‐0.96(Y-­‐18)  =>  X=  -­‐0.96Y  +  49.28     • y  on  x   • byx  =  ∑xy  /  ∑x2    =  -­‐94/360  =  -­‐0.26   • Y-­‐Yb=  byx  (X-­‐Xb)   • Y-­‐18  =  -­‐0.26(X-­‐32)  =>  Y  =  -­‐0.26X  +  26.32   Small Sample Test o T  Test  (Student  Test)  when  sample  size  is  less  than  30   o t  =  (Xb  -­‐  µ0)  /  (s/√n-­‐1)     1. The  mean  percentage  of  passes  in  all  the  schools  of  a  town  was  found   to   be   83%.   A   random   sample   of   17   schools   revealed   that   86%   pass   with  standard  deviation  of  3%.  Test  a  1%  level  of  significance  whether   the  mean  percentage  of  passes  is  more  than  83%   • µ  =  83%   • n  =  17   • Xb  =  86%   • s=  3%   • Degree  of  freedom  =  n-­‐1  =  16   • Level  of  Significance  =  1%     • Null  Hypothesis  (H0):  Mean  percentage  of  passes  is  less  than  83%   • Alternate  Hypothesis  (Ha):  Mean  percentage  of  passes  is  more  than   83%     • tcal  =  (Xb  -­‐  µ0)  /  (s/√n-­‐1)  =  (86-­‐83)  /  3/√(17-­‐1)  =  4     • From  the  statistics  table,  ttable  =  2.583  (For  Degree  of  freedom  =  16  and   Level  of  significance  of  1%)    
  • 22. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   22   • ttable  <  tcal  implies  that  the  Null  Hypothesis  is  in  critical  region  so  its  not   accepted  so  Ha  is  accepted      
  • 23. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   23     IMPORTANT QUESTIONS 1. Distinguish   between   probability   and   non   probability   sampling   methods’  by  giving  suitable  examples   2. Research  refers  to  ends  and/or  means.  Discuss  this  statement   3. Hypothesis  is  the  guiding  force  in  any  research  study?  Justify  and   explain  the  process  of  hypothesis  formulation  and  testing  it  with   suitable  example   4. Briefly  describe  the  contents  of  a  research  report   5. Briefly  describe  the  various  methods  used  for  descriptive  analysis   of  data   6. What   is   sampling?   List   the   similarities   and   differences   between   stratified  sampling  and  quota  sampling   7. How   are   research   design   classified?   What   are   the   distinguishing   features  of  each?  Differentiate  by  giving  appropriate  examples   8. What   do   you   mean   by   measurement?   Explain   four   key   levels   of   measurement  with  suitable  examples  and  also  give  details  of  what   statistical  technique  can  be  used  with  data  from  each  type  of  scale?   9. What   is   scaling?   Describe   the   various   comparative   and   non   comparative   scaling   techniques   used   in   business   research   with   suitable  examples   10. How  do  you  edit  a  questionnaire?  What  are  the  precautions  that  a   research  must  take  while  editing  and  coding  a  questionnaire?  Give   suitable  example   11. Explain   various   Parametric   and   Non   Parametric   Test   with   examples   12. Discus  the  various  types  of  research  and  their  features   13. Find   the   correlation   of   coefficient   for   the   following   data   and   comment  on  its  significance?     X   24   26   36   35   43   45   47   Y   47   48   54   58   59   59   65     14. Perform   ANOVA   with   5%   level   of   significance   to   determine   whether  there  is  a  significant  difference  in  the  mean  speed  of  four   different  machines   Hours   Machine  A   Machine  B   Machine  C   Machine  D   1   15   14   30   35   2   20   16   25   30   3   25   22   24   32   4   20   28   26   28     15. From   the   data   given   below   about   the   treatment   of   patients   suffering  from  cold,  state  whether  the  new  treatment  is  superior  to   that   of   the   conventional   treatment.   You   can   use   Kai2   test   for   evaluation   Treatment   Favorable   Not  Favorable   New   280   60   Conventional   120   40  
  • 24. Paper1: Research Methodology Exam Sheet   Shivananda  R  Koteshwar,  PhD  Research  Scholar,  Bangalore  University   24     16. Calculate  the  straight  line  trend  for  the  following  data  and  forecast   the  production  figures  for  the  next  two  years   Year   2006   2007   2008   2009   2010   2011   2012   2013   Production   43   67   34   76   71   85   88   96     17. A  cooperative  wishes  to  test  whether  the  preference  of  consumers   for  its  products  its  dependent  on  income  levels.  Use  the  Chi  square   test  to  decide.  You  may  use  a  5%  significance  level   Product  Preferred   Income   Product  A   Product  B   Product  C   Product  D   Low   185   45   95   325   Medium   65   40   75   180   High   35   25   70   130   Total   285   110   240   635