Regression and Correlation Analysis - Regression and Correlation Analysis
Regression Analysis
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Transcript of Regression Analysis
Regression AnalysisRegression analysis is a mathematical measure of the
averages relationship between two or more variable in terms of the original units of data.
Types of Regression(i) Simple Regression (Two Variable at a time)(ii) Multiple Regression (More than two variable at a time)
Linear Regression: If the regression curve is a straight line then there is a linear regression between the variables .
Non-linear Regression/ Curvilinear Regression: If the regression curve is not a straight line then there is a non-linear regression between the variables.
Simple Linear Regression Model & its Estimation
A simple linear regression model is based on a single independent variable and its general form is: Slope/ Regression Coefficients
Here Intercepts = dependent variable or regressands
= independent variable or regressor
= random error or disturbance term
Importance of error term:
(i) It captures the effect of on the dependent variable of all variable not included in the model.
(ii) It captures any specification error related to assumed linear functional form.
(iii) It captures the effects of unpredictable random componenets present in the dependent variable.
ttt XY
tY
tX
tt
Estimation of the Model
Yt Xt
xtyt xt2
Sales (thousands
of Unit)
Adver Exp(million of
Rs.)
37 4.5=309/7
36/7-7.14286 -0.64286 4.591837 0.413265
48 6.5 3.857143 1.357143 5.234694 1.841837
45 3.5 0.857143 -1.64286 -1.40816 2.69898
36 3 -8.14286 -2.14286 17.44898 4.591837
25 2.5 -19.1429 -2.64286 50.59184 6.984694
55 8.5 10.85714 3.357143 36.44898 11.27041
63 7.5 18.85714 2.357143 44.44898 5.556122
∑Yt =309 ∑Xt = 36
44.1428 5.1428 ∑xt yt =157.37
∑xt 2 =
33.354
tY tX ttt YYy ˆ ttt XXx ˆ
Estimation of the Model
tt
t
tt
XY
XY
x
yx
717.4882.19
882.19)143.5)(717.4(143.44ˆˆˆˆ
717.4354.33
357.157ˆ2
Then the estimated simple linear regression model is
tt
t
t
XY
XY
x
yx
717.4882.19
882.19)143.5)(717.4(143.44ˆˆˆˆ
717.4354.33
357.157ˆ2
22
General Formula for First Order Coefficients
)1)(1( 22.
YWXW
YWXWXYWYX
rr
rrrr
General Formula for Second Order Coefficients
)1)(1( 2.
2.
....
OYWOXW
OYWOXWOXYWOYX
rr
rrrr
Partial Correlation
Remarks:1. Partial correlation coefficients lies between -1 & 1
2. Correlation coefficients are calculated on the bases of zero order coefficients or simple correlation where no variable is kept constant.
Limitation:3. In the calculation of partial correlation coefficients, it is
presumed that there exists a linear relation between variables. In real situation, this condition lacks in some cases.
4. The reliability of the partial correlation coefficient decreases as their order goes up. This means that the second order partial coefficients are not as dependable as the first order ones are. Therefore, it is necessary that the size of the items in the gross correlation should be large.
5. It involves a lot of calculation work and its analysis is not easy.
Partial CorrelationExample: From the following data calculate 12.3
x1 : 4 0 1 1 1 3 4 1
x2 : 2 0 2 4 2 3 3 0
x3 : 1 4 2 2 3 0 4 0Solution:
22
16 2
2
16 ,2
2
16321 XandXX
Partial Correlation
Multiple CorrelationThe fluctuation in given series are not usually dependent upon a single factor or cause. For example wheat yields is not only dependent upon rain but also on the fertilizer used, sunshine etc. The association between such series and several variable causing these fluctuation is known as multiple correlation.
It is also defined as “ the correlation between several variable.”
Co-efficient of Multiple Correlation:Let there be three variable X1, X2 and X3.
Let X1 be dependent variable, depending upon independent variable , X2 and X3. The multiple correlation coefficient are defined as follows:R1.23 = Multiple correlation with X1 as dependent variable and X2. and X3. , as
independent variableR2.13 = Multiple correlation with X2 as dependent variable and X1. and X3. , as
independent variableR3.12 = Multiple correlation with X3 as dependent variable and X1. and X2 , as
independent variable
Calculation of Multiple Correlation Coefficient
General Formula
For example
Remarks
• Multiple correlation coefficient is a non-negative coefficient.• It is value ranges between 0 and 1. It cannot assume a minus
value.• If R1.23 = 0, then r12 = 0 and r13=0• R1.23 r12 and R1.23 r13 • R1.23 is the same as R1.32
• (R1.23 )2 = Coefficient of multiple determination.• If there are 3 independent variable and one dependent variable
the formula for finding out the multiple correlation is
)1)(1)(1(1 34.122
3.122
142
234.1 rrrR
Limitation
Advantages of Multiple Correlation
ExampleGiven the following data
X1: 3 5 6 8 12 14X2: 16 10 7 4 3 2X3: 90 72 54 42 30 12
Compute coefficients of correlation of X3 on X1 and X2
Example
Example
Types of Correlation
X
r12.3 is the correlation between variables 1 and 2 with variable 3 removed from both variables. To illustrate this, run separate regressions using X3 as the independent variable and X1 and X2 as dependent variables. Next, compute residuals for regression...