12-3 CONFIDENCE INTERVALS IN MULTIPLE LINEAR REGRESSION 43712-3 CONFIDENCE INTERVALS IN MULTIPLE LINEAR REGRESSION12-3.1 Confidence Intervalson Individual Regression CoefficientsIn multiple regression models, it is often useful to construct confidence interval estimates for
the regression coefficients The development of a procedure for obtaining these confi-
dence intervals requires that the errors are normally and independently distributed with
mean zero and variance 2. This is the same assumption required in hypothesis testing.
Therefore, the observations {Yi} are normally and independently distributed with mean 0
gkj 1 jxijand variance 2. Since the least squares estimator is a linear combination of the
observations, it follows that is normally distributed with mean vector and covariance
matrix. Then each of the statistics(12-33)has a tdistribution with npdegrees of freedom, where Cjjis the jjth element of the
matrix, and is the estimate of the error variance, obtained from Equation 12-16. This
leads to the following 100(1)% confidence interval for the regression coefficient
j, j0, 1, p, k.ˆ^21 X¿X 2 ^1Tˆjj
2 ˆ^2 Cjjj0, 1, p , k
21 X¿X 2 ^1ˆˆ5 i 65 j 6.Because is the standard error of the regression coefficient , we would also write the
CI formula asEXAMPLE 12-6 We will construct a 95% confidence interval on the parameter 1 in the wire bond pull strength
problem. The point estimate of 1 is and the diagonal element of
corresponding to 1 is C 11 0.001671. The estimate of 2 is and t0.025,222.074.
Therefore, the 95% CI on 1 is computed from Equation 12-34 aswhich reduces to2.55029
1
2.938252.74427 1 2.074 221 5.2352 21 .001671 2
1
2.74427 1 2.074 221 5.2352 21 .001671 2ˆ^2 5.2352,ˆ 1 2.74427 1 X¿X 2 ^1ˆjt2,np se 1 ˆj 2
j
ˆjt2,np se 1 ˆj 2.2 ˆ^2 Cjj ˆj(b) Use the t-test to evaluate the contribution of each
regressor to the model. Does it seem that all regressors are
necessary? Use 0.05.
(c) Fit a regression model relating the number of games won
to the number of points scored and the number of powerplay goals. Does this seem to be a logical choice of
regressors, considering your answer to part (b)? Test this
new model for significance of regression and evaluate the
contribution of each regressor to the model using the
t-test. Use 0.05.A 100(1) % confidence interval on the regression coefficient j, j0, 1, p,
kin the multiple linear regression model is given byˆjt2,np 2 ˆ^2 Cjj
j
ˆjt2,np 2 ˆ^2 Cjj (12-34)Definitionc 12 .qxd 5/20/02 9:33 M Page 437 RK UL 6 RK UL 6:Desktop Folder:TEMP WORK:MONTGOMERY:REVISES UPLO D CH114 FIN L:Quark Files: