SlideShare a Scribd company logo
1 of 9
Download to read offline
Multivariate Analysis
Basic Principles and Applications of Multiple Regression Analysis
Presented by,
A.Raihanathus Sahdhiyya,
II M.Sc.,Microbiology,
TBAK College
Submitted to,
Dr. F. Arockiya Aarthi Rajathi,
Asst. Professor,
Dept. of Microbiology &
Biotechnology,
TBAK College
What is Multivariate Analysis ??
Multivariate analysis (MVA) is based on the statistical principle of
multivariate statistics, which involves observation and analysis of
more than one statistical outcome variable at a time
It is used to address the situations where multiple measurements are
made on each experimental unit and the relations among these
measurements and their structures are important
Applications
● Multivariate hypothesis testing
● Dimensionality reduction
● Latent structure discovery
● Clustering
● Multivariate regression analysis
● Classification and discrimination analysis
● Variable selection
● Multidimensional Scaling
● Data mining
Types of Multivariate Analysis
● Additive Tree.
● Canonical Correlation Analysis.
● Cluster Analysis.
● Correspondence Analysis / Multiple Correspondence Analysis.
● Factor Analysis.
● Generalized Procrustean Analysis.
● Independent Component Analysis.
● MANOVA.
● Multidimensional Scaling.
● Multiple Regression Analysis.
● Partial Least Square Regression.
● Principal Component Analysis / Regression / PARAFAC.
● Redundancy Analysis.
Multiple
Regression
Analysis
What is Regression Analysis ??
▪ Regression analysis is used in stats to find trends in data
▪ will provide you with an equation for a graph so that you can make predictions about your
data
▪ For example, if you’ve been putting on weight over the last few years, it can predict how much
you’ll weigh in ten years time if you continue to put on weight at the same rate
▪ t will also give you a slew of statistics (including a p-value and a correlation coefficient) to tell
you how accurate your model is
Essentially, regression is the “best guess” at using a set of data to
make some kind of prediction. It’s fitting a set of points to a graph
Multiple Regression Analysis
- most commonly utilized multivariate technique and often used as a forecasting tool
- is used to see if there is a statistically significant relationship between sets of
variables. It’s used to find trends in those sets of data
Multiple regression analysis is almost the same as simple linear regression. The only
difference between simple linear regression and multiple regression is in the number
of predictors (“x” variables) used in the regression.
● Simple regression analysis uses a single x variable for each dependent “y”
variable. For example: (x1, Y1).
● Multiple regression uses multiple “x” variables for each independent
variable: (x1)1, (x2)1, (x3)1, Y1).
Multiple Regression Analysis Output
Regression analysis is always performed in software, like Excel or SPSS. The output
differs according to how many variables you have but it’s essentially the same type of
output you would find in a simple linear regression. There’s just more of it:
● Simple regression: Y = b0 + b1 x.
● Multiple regression: Y = b0 + b1 x1 + b0 + b1 x2…b0…b1 xn.
The output would include a summary, similar to a summary for simple linear regression,
that includes: R (the multiple correlation coefficient), R squared (the coefficient of
determination), adjusted R-squared, The standard error of the estimate.
Purposes
–Prediction
–Explanation
–Theory building

More Related Content

What's hot

Multivariate data analysis
Multivariate data analysisMultivariate data analysis
Multivariate data analysisSetia Pramana
 
Regression analysis.
Regression analysis.Regression analysis.
Regression analysis.sonia gupta
 
Factor analysis
Factor analysisFactor analysis
Factor analysissaba khan
 
Statistical inference: Estimation
Statistical inference: EstimationStatistical inference: Estimation
Statistical inference: EstimationParag Shah
 
Multivariate Analysis Techniques
Multivariate Analysis TechniquesMultivariate Analysis Techniques
Multivariate Analysis TechniquesMehul Gondaliya
 
Mpc 006 - 02-03 partial and multiple correlation
Mpc 006 - 02-03 partial and multiple correlationMpc 006 - 02-03 partial and multiple correlation
Mpc 006 - 02-03 partial and multiple correlationVasant Kothari
 
Multiple Correlation - Thiyagu
Multiple Correlation - ThiyaguMultiple Correlation - Thiyagu
Multiple Correlation - ThiyaguThiyagu K
 
Logistic regression
Logistic regressionLogistic regression
Logistic regressionDrZahid Khan
 
Auto Correlation Presentation
Auto Correlation PresentationAuto Correlation Presentation
Auto Correlation PresentationIrfan Hussain
 
Correlation and regression
Correlation and regressionCorrelation and regression
Correlation and regressionMOHIT PANCHAL
 
Univariate analysis:Medical statistics Part IV
Univariate analysis:Medical statistics Part IVUnivariate analysis:Medical statistics Part IV
Univariate analysis:Medical statistics Part IVRamachandra Barik
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression AnalysisSalim Azad
 
Multivariate Variate Techniques
Multivariate Variate TechniquesMultivariate Variate Techniques
Multivariate Variate TechniquesDr. Keerti Jain
 

What's hot (20)

Multivariate data analysis
Multivariate data analysisMultivariate data analysis
Multivariate data analysis
 
Regression analysis.
Regression analysis.Regression analysis.
Regression analysis.
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
 
Factor analysis
Factor analysisFactor analysis
Factor analysis
 
Statistical inference: Estimation
Statistical inference: EstimationStatistical inference: Estimation
Statistical inference: Estimation
 
Multivariate Analysis Techniques
Multivariate Analysis TechniquesMultivariate Analysis Techniques
Multivariate Analysis Techniques
 
Mpc 006 - 02-03 partial and multiple correlation
Mpc 006 - 02-03 partial and multiple correlationMpc 006 - 02-03 partial and multiple correlation
Mpc 006 - 02-03 partial and multiple correlation
 
Multiple Correlation - Thiyagu
Multiple Correlation - ThiyaguMultiple Correlation - Thiyagu
Multiple Correlation - Thiyagu
 
Multivariate Analysis
Multivariate AnalysisMultivariate Analysis
Multivariate Analysis
 
Logistic regression
Logistic regressionLogistic regression
Logistic regression
 
Multivariate analysis
Multivariate analysisMultivariate analysis
Multivariate analysis
 
Auto Correlation Presentation
Auto Correlation PresentationAuto Correlation Presentation
Auto Correlation Presentation
 
Correlation and regression
Correlation and regressionCorrelation and regression
Correlation and regression
 
Binomial distribution
Binomial distributionBinomial distribution
Binomial distribution
 
Correlation and Regression
Correlation and RegressionCorrelation and Regression
Correlation and Regression
 
Univariate analysis:Medical statistics Part IV
Univariate analysis:Medical statistics Part IVUnivariate analysis:Medical statistics Part IV
Univariate analysis:Medical statistics Part IV
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
 
Correlations using SPSS
Correlations using SPSSCorrelations using SPSS
Correlations using SPSS
 
Non-Parametric Tests
Non-Parametric TestsNon-Parametric Tests
Non-Parametric Tests
 
Multivariate Variate Techniques
Multivariate Variate TechniquesMultivariate Variate Techniques
Multivariate Variate Techniques
 

Similar to Multivariate analysis - Multiple regression analysis

Analysis of data (pratik)
Analysis of data (pratik)Analysis of data (pratik)
Analysis of data (pratik)Patel Parth
 
An Overview and Application of Discriminant Analysis in Data Analysis
An Overview and Application of Discriminant Analysis in Data AnalysisAn Overview and Application of Discriminant Analysis in Data Analysis
An Overview and Application of Discriminant Analysis in Data AnalysisIOSR Journals
 
Mba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendixMba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendixStephen Ong
 
Multivariate Approaches in Nursing Research Assignment.pdf
Multivariate Approaches in Nursing Research Assignment.pdfMultivariate Approaches in Nursing Research Assignment.pdf
Multivariate Approaches in Nursing Research Assignment.pdfbkbk37
 
How to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdfHow to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdfphdassistance101
 
Research 101: Inferential Quantitative Analysis
Research 101: Inferential Quantitative AnalysisResearch 101: Inferential Quantitative Analysis
Research 101: Inferential Quantitative AnalysisHarold Gamero
 
Analysis of variance (anova)
Analysis of variance (anova)Analysis of variance (anova)
Analysis of variance (anova)Sadhana Singh
 
A Review Of Statistic
A Review Of StatisticA Review Of Statistic
A Review Of Statisticjesulito1716
 
General Linear Model | Statistics
General Linear Model | StatisticsGeneral Linear Model | Statistics
General Linear Model | StatisticsTransweb Global Inc
 
Dependence Techniques
Dependence Techniques Dependence Techniques
Dependence Techniques Hasnain Khan
 
linear model multiple predictors.pdf
linear model multiple predictors.pdflinear model multiple predictors.pdf
linear model multiple predictors.pdfssuser7d5314
 
ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)
ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)
ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)Lenis Beatriz Marquez Vidal
 
QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)
QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)
QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)Satigayatri
 
classification of various Multivariate techniques
classification of various Multivariate techniquesclassification of various Multivariate techniques
classification of various Multivariate techniquesssuser900e74
 
My regression lecture mk3 (uploaded to web ct)
My regression lecture   mk3 (uploaded to web ct)My regression lecture   mk3 (uploaded to web ct)
My regression lecture mk3 (uploaded to web ct)chrisstiff
 
A review of statistics
A review of statisticsA review of statistics
A review of statisticsedisonre
 

Similar to Multivariate analysis - Multiple regression analysis (20)

Analysis of data (pratik)
Analysis of data (pratik)Analysis of data (pratik)
Analysis of data (pratik)
 
An Overview and Application of Discriminant Analysis in Data Analysis
An Overview and Application of Discriminant Analysis in Data AnalysisAn Overview and Application of Discriminant Analysis in Data Analysis
An Overview and Application of Discriminant Analysis in Data Analysis
 
Mba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendixMba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendix
 
Multivariate Approaches in Nursing Research Assignment.pdf
Multivariate Approaches in Nursing Research Assignment.pdfMultivariate Approaches in Nursing Research Assignment.pdf
Multivariate Approaches in Nursing Research Assignment.pdf
 
How to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdfHow to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdf
 
Discriminant analysis.pptx
Discriminant analysis.pptxDiscriminant analysis.pptx
Discriminant analysis.pptx
 
Research 101: Inferential Quantitative Analysis
Research 101: Inferential Quantitative AnalysisResearch 101: Inferential Quantitative Analysis
Research 101: Inferential Quantitative Analysis
 
Analysis of variance (anova)
Analysis of variance (anova)Analysis of variance (anova)
Analysis of variance (anova)
 
A Review Of Statistic
A Review Of StatisticA Review Of Statistic
A Review Of Statistic
 
General Linear Model | Statistics
General Linear Model | StatisticsGeneral Linear Model | Statistics
General Linear Model | Statistics
 
Dependence Techniques
Dependence Techniques Dependence Techniques
Dependence Techniques
 
linear model multiple predictors.pdf
linear model multiple predictors.pdflinear model multiple predictors.pdf
linear model multiple predictors.pdf
 
Unit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdfUnit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdf
 
Unit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdfUnit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdf
 
Unit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdfUnit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdf
 
ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)
ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)
ANALYZING DATA BY BY SELLIGER AND SHAOAMY (1989)
 
QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)
QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)
QSAR statistical methods for drug discovery(pharmacology m.pharm2nd sem)
 
classification of various Multivariate techniques
classification of various Multivariate techniquesclassification of various Multivariate techniques
classification of various Multivariate techniques
 
My regression lecture mk3 (uploaded to web ct)
My regression lecture   mk3 (uploaded to web ct)My regression lecture   mk3 (uploaded to web ct)
My regression lecture mk3 (uploaded to web ct)
 
A review of statistics
A review of statisticsA review of statistics
A review of statistics
 

More from RaihanathusSahdhiyya

Whittaker's 5 kingdom classificaton
Whittaker's 5 kingdom classificatonWhittaker's 5 kingdom classificaton
Whittaker's 5 kingdom classificatonRaihanathusSahdhiyya
 
Systemic lupus erythematosus (SLE)
Systemic lupus erythematosus (SLE)Systemic lupus erythematosus (SLE)
Systemic lupus erythematosus (SLE)RaihanathusSahdhiyya
 
National informatics centre (NIC)
National informatics centre (NIC) National informatics centre (NIC)
National informatics centre (NIC) RaihanathusSahdhiyya
 
Active edible films - An emerging trend in Food Packing technology
Active edible films - An emerging trend in Food Packing technologyActive edible films - An emerging trend in Food Packing technology
Active edible films - An emerging trend in Food Packing technologyRaihanathusSahdhiyya
 
Cream separator - Cream separation in milk
Cream separator - Cream separation in milkCream separator - Cream separation in milk
Cream separator - Cream separation in milkRaihanathusSahdhiyya
 
Homogenizer - Homogenization of milk
Homogenizer - Homogenization of milkHomogenizer - Homogenization of milk
Homogenizer - Homogenization of milkRaihanathusSahdhiyya
 
Ice-Cream Freezers : Types - Construction and working
Ice-Cream Freezers : Types - Construction and workingIce-Cream Freezers : Types - Construction and working
Ice-Cream Freezers : Types - Construction and workingRaihanathusSahdhiyya
 
Threats to agrobiodiversity (Agricultural Biodiversity)
Threats to agrobiodiversity (Agricultural Biodiversity) Threats to agrobiodiversity (Agricultural Biodiversity)
Threats to agrobiodiversity (Agricultural Biodiversity) RaihanathusSahdhiyya
 
Spoilage of canned foods (MICROBIAL SPOILAGE)
Spoilage of canned foods (MICROBIAL SPOILAGE) Spoilage of canned foods (MICROBIAL SPOILAGE)
Spoilage of canned foods (MICROBIAL SPOILAGE) RaihanathusSahdhiyya
 
Nanotechnology for Water Treatment
Nanotechnology for Water TreatmentNanotechnology for Water Treatment
Nanotechnology for Water TreatmentRaihanathusSahdhiyya
 
Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)
Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)
Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)RaihanathusSahdhiyya
 

More from RaihanathusSahdhiyya (17)

Classification of microorganisms
Classification of microorganismsClassification of microorganisms
Classification of microorganisms
 
Whittaker's 5 kingdom classificaton
Whittaker's 5 kingdom classificatonWhittaker's 5 kingdom classificaton
Whittaker's 5 kingdom classificaton
 
Systemic lupus erythematosus (SLE)
Systemic lupus erythematosus (SLE)Systemic lupus erythematosus (SLE)
Systemic lupus erythematosus (SLE)
 
National informatics centre (NIC)
National informatics centre (NIC) National informatics centre (NIC)
National informatics centre (NIC)
 
Virology techniques
Virology techniquesVirology techniques
Virology techniques
 
Extremophiles - infograph
Extremophiles -  infographExtremophiles -  infograph
Extremophiles - infograph
 
Zero waste management
Zero waste managementZero waste management
Zero waste management
 
Microbial antibiotics
Microbial antibioticsMicrobial antibiotics
Microbial antibiotics
 
Active edible films - An emerging trend in Food Packing technology
Active edible films - An emerging trend in Food Packing technologyActive edible films - An emerging trend in Food Packing technology
Active edible films - An emerging trend in Food Packing technology
 
Cream separator - Cream separation in milk
Cream separator - Cream separation in milkCream separator - Cream separation in milk
Cream separator - Cream separation in milk
 
Homogenizer - Homogenization of milk
Homogenizer - Homogenization of milkHomogenizer - Homogenization of milk
Homogenizer - Homogenization of milk
 
Homogenization of milk
Homogenization of milk Homogenization of milk
Homogenization of milk
 
Ice-Cream Freezers : Types - Construction and working
Ice-Cream Freezers : Types - Construction and workingIce-Cream Freezers : Types - Construction and working
Ice-Cream Freezers : Types - Construction and working
 
Threats to agrobiodiversity (Agricultural Biodiversity)
Threats to agrobiodiversity (Agricultural Biodiversity) Threats to agrobiodiversity (Agricultural Biodiversity)
Threats to agrobiodiversity (Agricultural Biodiversity)
 
Spoilage of canned foods (MICROBIAL SPOILAGE)
Spoilage of canned foods (MICROBIAL SPOILAGE) Spoilage of canned foods (MICROBIAL SPOILAGE)
Spoilage of canned foods (MICROBIAL SPOILAGE)
 
Nanotechnology for Water Treatment
Nanotechnology for Water TreatmentNanotechnology for Water Treatment
Nanotechnology for Water Treatment
 
Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)
Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)
Sanger sequencing (DNA sequencing by ENZYMATIC METHOD)
 

Recently uploaded

Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxMan or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxDhatriParmar
 
Narcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfNarcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfPrerana Jadhav
 
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptxDhatriParmar
 
DiskStorage_BasicFileStructuresandHashing.pdf
DiskStorage_BasicFileStructuresandHashing.pdfDiskStorage_BasicFileStructuresandHashing.pdf
DiskStorage_BasicFileStructuresandHashing.pdfChristalin Nelson
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesVijayaLaxmi84
 
PART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFE
PART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFEPART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFE
PART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFEMISSRITIMABIOLOGYEXP
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...Nguyen Thanh Tu Collection
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfChristalin Nelson
 
Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17Celine George
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQuiz Club NITW
 
Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWQuiz Club NITW
 
Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...
Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...
Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...HetalPathak10
 
Comparative Literature in India by Amiya dev.pptx
Comparative Literature in India by Amiya dev.pptxComparative Literature in India by Amiya dev.pptx
Comparative Literature in India by Amiya dev.pptxAvaniJani1
 
Congestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationCongestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationdeepaannamalai16
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxkarenfajardo43
 
CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...
CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...
CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...Nguyen Thanh Tu Collection
 
4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptxmary850239
 

Recently uploaded (20)

Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxMan or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
 
Chi-Square Test Non Parametric Test Categorical Variable
Chi-Square Test Non Parametric Test Categorical VariableChi-Square Test Non Parametric Test Categorical Variable
Chi-Square Test Non Parametric Test Categorical Variable
 
Narcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfNarcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdf
 
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of EngineeringFaculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
 
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
 
DiskStorage_BasicFileStructuresandHashing.pdf
DiskStorage_BasicFileStructuresandHashing.pdfDiskStorage_BasicFileStructuresandHashing.pdf
DiskStorage_BasicFileStructuresandHashing.pdf
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their uses
 
PART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFE
PART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFEPART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFE
PART 1 - CHAPTER 1 - CELL THE FUNDAMENTAL UNIT OF LIFE
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdf
 
Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
 
Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITW
 
Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...
Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...
Satirical Depths - A Study of Gabriel Okara's Poem - 'You Laughed and Laughed...
 
Comparative Literature in India by Amiya dev.pptx
Comparative Literature in India by Amiya dev.pptxComparative Literature in India by Amiya dev.pptx
Comparative Literature in India by Amiya dev.pptx
 
Congestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationCongestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentation
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
 
Plagiarism,forms,understand about plagiarism,avoid plagiarism,key significanc...
Plagiarism,forms,understand about plagiarism,avoid plagiarism,key significanc...Plagiarism,forms,understand about plagiarism,avoid plagiarism,key significanc...
Plagiarism,forms,understand about plagiarism,avoid plagiarism,key significanc...
 
CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...
CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...
CHUYÊN ĐỀ ÔN THEO CÂU CHO HỌC SINH LỚP 12 ĐỂ ĐẠT ĐIỂM 5+ THI TỐT NGHIỆP THPT ...
 
4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx
 

Multivariate analysis - Multiple regression analysis

  • 1. Multivariate Analysis Basic Principles and Applications of Multiple Regression Analysis Presented by, A.Raihanathus Sahdhiyya, II M.Sc.,Microbiology, TBAK College Submitted to, Dr. F. Arockiya Aarthi Rajathi, Asst. Professor, Dept. of Microbiology & Biotechnology, TBAK College
  • 2. What is Multivariate Analysis ?? Multivariate analysis (MVA) is based on the statistical principle of multivariate statistics, which involves observation and analysis of more than one statistical outcome variable at a time It is used to address the situations where multiple measurements are made on each experimental unit and the relations among these measurements and their structures are important
  • 3. Applications ● Multivariate hypothesis testing ● Dimensionality reduction ● Latent structure discovery ● Clustering ● Multivariate regression analysis ● Classification and discrimination analysis ● Variable selection ● Multidimensional Scaling ● Data mining
  • 4. Types of Multivariate Analysis ● Additive Tree. ● Canonical Correlation Analysis. ● Cluster Analysis. ● Correspondence Analysis / Multiple Correspondence Analysis. ● Factor Analysis. ● Generalized Procrustean Analysis. ● Independent Component Analysis. ● MANOVA. ● Multidimensional Scaling. ● Multiple Regression Analysis. ● Partial Least Square Regression. ● Principal Component Analysis / Regression / PARAFAC. ● Redundancy Analysis.
  • 6. What is Regression Analysis ?? ▪ Regression analysis is used in stats to find trends in data ▪ will provide you with an equation for a graph so that you can make predictions about your data ▪ For example, if you’ve been putting on weight over the last few years, it can predict how much you’ll weigh in ten years time if you continue to put on weight at the same rate ▪ t will also give you a slew of statistics (including a p-value and a correlation coefficient) to tell you how accurate your model is Essentially, regression is the “best guess” at using a set of data to make some kind of prediction. It’s fitting a set of points to a graph
  • 7. Multiple Regression Analysis - most commonly utilized multivariate technique and often used as a forecasting tool - is used to see if there is a statistically significant relationship between sets of variables. It’s used to find trends in those sets of data Multiple regression analysis is almost the same as simple linear regression. The only difference between simple linear regression and multiple regression is in the number of predictors (“x” variables) used in the regression. ● Simple regression analysis uses a single x variable for each dependent “y” variable. For example: (x1, Y1). ● Multiple regression uses multiple “x” variables for each independent variable: (x1)1, (x2)1, (x3)1, Y1).
  • 8. Multiple Regression Analysis Output Regression analysis is always performed in software, like Excel or SPSS. The output differs according to how many variables you have but it’s essentially the same type of output you would find in a simple linear regression. There’s just more of it: ● Simple regression: Y = b0 + b1 x. ● Multiple regression: Y = b0 + b1 x1 + b0 + b1 x2…b0…b1 xn. The output would include a summary, similar to a summary for simple linear regression, that includes: R (the multiple correlation coefficient), R squared (the coefficient of determination), adjusted R-squared, The standard error of the estimate.