12-2 HYPOTHESIS TESTS IN MULTIPLE LINEAR REGRESSION 429We should reject H 0 if the computed value of the test statistic in Equation 12-18, f 0 , is greater than
f ,k,np. The procedure is usually summarized in an analysis of variance table such as Table 12-9.
We can find a computing formula for SSEas follows:Substituting into the above, we obtainSSEy¿yˆ¿X¿y (12-19)eyyˆyXˆSSE ani 11 yiyˆi 22 ani 1ei^2 e¿eH 1 : jZ 0 for at least one j (12-17)
H 0 : 1 2 # # #k 0F 0 (12-18)SSRk
SSE 1 np 2MSR
MSERejection of implies that at least one of the regressor variables
x 1 , x 2 , p, xkcontributes significantly to the model.
The test for significance of regression is a generalization of the procedure used in simple
linear regression. The total sum of squares SSTis partitioned into a sum of squares due to re-
gression and a sum of squares due to error, say,SSTSSR SSENow if is true, is a chi-square random variable with k
degrees of freedom. Note that the number of degrees of freedom for this chi-square random
variable is equal to the number of regressor variables in the model. We can also show the
SSE 2 is a chi-square random variable with npdegrees of freedom, and that SSEand SSR
are independent. The test statistic for H 0 : 1 2 pk 0 isH 0 : 1 2 pk 0 SSR 2
H 0 : 1 2 pk 0Table 12-9 Analysis of Variance for Testing Significance of Regression in Multiple Regression
Source of Degrees of
Variation Sum of Squares Freedom Mean Square F 0
Regression SSR kMSR MSRMSE
Error or residual SSE npMSE
Total SST n 1appropriate hypotheses arec 12 .qxd 5/20/02 2:58 PM Page 429 RK UL 6 RK UL 6:Desktop Folder:TEMP WORK:MONTGOMERY:REVISES UPLO D CH114 FIN L:Quark Files: