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CORRELATION& REGRESSION
ANALYSIS
Binod Kumar Singh
Ph.D., Statistics
Department of QT/RM/Operation
Contents
Meaning of Correlation
Types of correlation
Correlation coefficient
Range of correlation coefficient
Interpretation of Correlation Coefficient (r)
Meaning of Regression
Difference between Correlation & Regression
Lines of Regression
Why two lines of regression
Regression coefficient
Correlation
 Correlation is a statistical tool that helps
to measure and analyse the degree of
relationship between two variables.
 Correlation analysis deals with the
association between two or more
variables.
Cont…
The measure of correlation called the correlation
coefficient .
The degree of relationship is expressed by coefficient
which range from correlation ( -1 ≤ r ≥ +1)
The direction of change is indicated by a sign.
The correlation analysis enable us to have an idea
about the degree & direction of the relationship
between the two variables under study.
Types of Correlation
Correlation
Positive Correlation Negative Correlation
Cont…
 Positive Correlation: The correlation is said to
be positive correlation if the values of two
variables changing with same direction.
Ex. Pub. Exp. & sales, Height & weight.
 Negative Correlation: The correlation is said to
be negative correlation when the values of
variables change with opposite direction.
Ex. Price & qty. demanded.
Direction of the Correlation
 Positive relationship – Variables change in the
same direction.
 As X is increasing, Y is increasing
 As X is decreasing, Y is decreasing
 E.g., As height increases, so does weight.
 Negative relationship – Variables change in
opposite directions.
 As X is increasing, Y is decreasing
 As X is decreasing, Y is increasing
 E.g., As TV time increases, grades decrease
Indicated by
sign; (+) or (-).
More Examples
 Positive relationshipsPositive relationships
 water consumption
and temperature.
 study time and
grades.
 Negative relationshipsNegative relationships:
 alcohol consumption
and driving ability.
 Price & quantity
demanded
Karl Pearson's
Coefficient of Correlation
 Pearson’s ‘r’ is the most common
correlation coefficient.
 Karl Pearson’s Coefficient of Correlation
denoted by- ‘r’ The coefficient of
correlation ‘r’ measure the degree of linear
relationship between two variables say x
& y.
Karl Pearson's
Coefficient of Correlation
 Karl Pearson’s Coefficient of
Correlation denoted by- r
-1 ≤ r ≤ +1
 Degree of Correlation is expressed by a
value of Coefficient
 Direction of change is Indicated by sign
( - ve) or ( + ve)
Interpretation of Correlation
Coefficient (r)
 The value of correlation coefficient ‘r’ ranges
from -1 to +1
 If r = +1, then the correlation between the two
variables is said to be perfect and positive
 If r = -1, then the correlation between the two
variables is said to be perfect and negative
 If r = 0, then there exists no correlation between
the variables
Regression Analysis
 Regression Analysis is a very powerful
tool in the field of statistical analysis in
predicting the value of one variable, given
the value of another variable, when those
variables are related to each other.
Regression Analysis
 Regression Analysis is mathematical measure of
average relationship between two or more
variables.
 Regression analysis is a statistical tool used in
prediction of value of unknown variable from
known variable.
Advantages of Regression Analysis
 Regression analysis provides estimates of
values of the dependent variables from the
values of independent variables.
 Regression analysis also helps to obtain a
measure of the error involved in using the
regression line as a basis for estimations .
 Regression analysis helps in obtaining a
measure of the degree of association or
correlation that exists between the two variable.
Regression line
 Regression line is the line which gives the best
estimate of one variable from the value of any
other given variable.
 The regression line gives the average
relationship between the two variables in
mathematical form.
Regression line
 For two variables X and Y, there are always two
lines of regression –
 Regression line of X on Y : gives the best
estimate for the value of X for any specific
given values of Y
 X = a + b Y a = X - intercept
 b = Slope of the line
 X = Dependent variable
 Y = Independent variable
Regression line
 For two variables X and Y, there are always two
lines of regression –
 Regression line of Y on X : gives the best
estimate for the value of Y for any specific given
values of X
 Y = a + bx a = Y - intercept
 b = Slope of the line
 Y = Dependent variable
 x= Independent variable
Why always two lines of
Regression
Properties of the Regression Coefficients
 The coefficient of correlation is geometric mean of the two
regression coefficients. r = √ byx*bxy
 If byx is positive than bxy should also be positive & vice
versa.
 If one regression coefficient is greater than one the other
must be less than one.
 The coefficient of correlation will have the same sign as
that our regression coefficient.
 Arithmetic mean of byx&bxyis equal to or greater than
coefficient of correlation. byx+bxy/2≥r
 Regression coefficient are independent of origin but not of
scale.
Correlation analysis vs.
Regression analysis.
 Regression is the average relationship between two
variables
 Correlation need not imply cause & effect
relationship between the variables understudy.- R A
clearly indicate the cause and effect relation ship
between the variables.
 There may be non-sense correlation between two
variables.- There is no such thing like non-sense
regression.
Cont…
 When the correlation coefficient is zero,
the two lines are perpendicular and when it
is ±1, then the regression lines are parallel
or coincide.

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Correlation

  • 1. CORRELATION& REGRESSION ANALYSIS Binod Kumar Singh Ph.D., Statistics Department of QT/RM/Operation
  • 2. Contents Meaning of Correlation Types of correlation Correlation coefficient Range of correlation coefficient Interpretation of Correlation Coefficient (r) Meaning of Regression Difference between Correlation & Regression Lines of Regression Why two lines of regression Regression coefficient
  • 3. Correlation  Correlation is a statistical tool that helps to measure and analyse the degree of relationship between two variables.  Correlation analysis deals with the association between two or more variables.
  • 4. Cont… The measure of correlation called the correlation coefficient . The degree of relationship is expressed by coefficient which range from correlation ( -1 ≤ r ≥ +1) The direction of change is indicated by a sign. The correlation analysis enable us to have an idea about the degree & direction of the relationship between the two variables under study.
  • 5. Types of Correlation Correlation Positive Correlation Negative Correlation
  • 6. Cont…  Positive Correlation: The correlation is said to be positive correlation if the values of two variables changing with same direction. Ex. Pub. Exp. & sales, Height & weight.  Negative Correlation: The correlation is said to be negative correlation when the values of variables change with opposite direction. Ex. Price & qty. demanded.
  • 7. Direction of the Correlation  Positive relationship – Variables change in the same direction.  As X is increasing, Y is increasing  As X is decreasing, Y is decreasing  E.g., As height increases, so does weight.  Negative relationship – Variables change in opposite directions.  As X is increasing, Y is decreasing  As X is decreasing, Y is increasing  E.g., As TV time increases, grades decrease Indicated by sign; (+) or (-).
  • 8. More Examples  Positive relationshipsPositive relationships  water consumption and temperature.  study time and grades.  Negative relationshipsNegative relationships:  alcohol consumption and driving ability.  Price & quantity demanded
  • 9. Karl Pearson's Coefficient of Correlation  Pearson’s ‘r’ is the most common correlation coefficient.  Karl Pearson’s Coefficient of Correlation denoted by- ‘r’ The coefficient of correlation ‘r’ measure the degree of linear relationship between two variables say x & y.
  • 10. Karl Pearson's Coefficient of Correlation  Karl Pearson’s Coefficient of Correlation denoted by- r -1 ≤ r ≤ +1  Degree of Correlation is expressed by a value of Coefficient  Direction of change is Indicated by sign ( - ve) or ( + ve)
  • 11. Interpretation of Correlation Coefficient (r)  The value of correlation coefficient ‘r’ ranges from -1 to +1  If r = +1, then the correlation between the two variables is said to be perfect and positive  If r = -1, then the correlation between the two variables is said to be perfect and negative  If r = 0, then there exists no correlation between the variables
  • 12. Regression Analysis  Regression Analysis is a very powerful tool in the field of statistical analysis in predicting the value of one variable, given the value of another variable, when those variables are related to each other.
  • 13. Regression Analysis  Regression Analysis is mathematical measure of average relationship between two or more variables.  Regression analysis is a statistical tool used in prediction of value of unknown variable from known variable.
  • 14. Advantages of Regression Analysis  Regression analysis provides estimates of values of the dependent variables from the values of independent variables.  Regression analysis also helps to obtain a measure of the error involved in using the regression line as a basis for estimations .  Regression analysis helps in obtaining a measure of the degree of association or correlation that exists between the two variable.
  • 15. Regression line  Regression line is the line which gives the best estimate of one variable from the value of any other given variable.  The regression line gives the average relationship between the two variables in mathematical form.
  • 16. Regression line  For two variables X and Y, there are always two lines of regression –  Regression line of X on Y : gives the best estimate for the value of X for any specific given values of Y  X = a + b Y a = X - intercept  b = Slope of the line  X = Dependent variable  Y = Independent variable
  • 17. Regression line  For two variables X and Y, there are always two lines of regression –  Regression line of Y on X : gives the best estimate for the value of Y for any specific given values of X  Y = a + bx a = Y - intercept  b = Slope of the line  Y = Dependent variable  x= Independent variable
  • 18. Why always two lines of Regression
  • 19. Properties of the Regression Coefficients  The coefficient of correlation is geometric mean of the two regression coefficients. r = √ byx*bxy  If byx is positive than bxy should also be positive & vice versa.  If one regression coefficient is greater than one the other must be less than one.  The coefficient of correlation will have the same sign as that our regression coefficient.  Arithmetic mean of byx&bxyis equal to or greater than coefficient of correlation. byx+bxy/2≥r  Regression coefficient are independent of origin but not of scale.
  • 20. Correlation analysis vs. Regression analysis.  Regression is the average relationship between two variables  Correlation need not imply cause & effect relationship between the variables understudy.- R A clearly indicate the cause and effect relation ship between the variables.  There may be non-sense correlation between two variables.- There is no such thing like non-sense regression.
  • 21. Cont…  When the correlation coefficient is zero, the two lines are perpendicular and when it is ±1, then the regression lines are parallel or coincide.