37211
Simple Linear
Regression and
Correlation
CHAPTER OUTLINELEARNING OBJECTIVESAfter careful study of this chapter, you should be able to do the following:- Use simple linear regression for building empirical models to engineering and scientific data
- Understand how the method of least squares is used to estimate the parameters in a linear
regression model - Analyze residuals to determine if the regression model is an adequate fit to the data or to see if
any underlying assumptions are violated - Test statistical hypotheses and construct confidence intervals on regression model parameters
- Use the regression model to make a prediction of a future observation and construct an
appropriate prediction interval on the future observation - Use simple transformations to achieve a linear regression model
- Apply the correlation model
11-1 EMPIRICAL MODELS
11-2 SIMPLE LINEAR REGRESSION
11-3 PROPERTIES OF THE LEAST
SQUARES ESTIMATORS
11-4 SOME COMMENTS ON USES OF
REGRESSION (CD ONLY)
11-5 HYPOTHESIS TESTS IN SIMPLE
LINEAR REGRESSION
11-5.1 Use of t-Tests
11-5.2Analysis of Variance Approach
to Test Significance of Regression
11-6 CONFIDENCE INTERVALS
11-6.1 Confidence Intervals on the
Slope and Intercept11-6.2 Confidence Interval on the
Mean Response
11-7 PREDICTION OF NEW
OBSERVATIONS
11-8 ADEQUACY OF THE REGRESSION
MODEL
11-8.1 Residual Analysis
11-8.2 Coefficient of Determination (R^2 )
11-8.3 Lack-of-Fit Test (CD Only)
11-9 TRANSFORMATIONS TO A
STRAIGHT LINE
11-10 MORE ABOUT
TRANSFORMATIONS (CD ONLY)
11-11 CORRELATIONc 11 .qxd 5/20/02 1:14 PM Page 372 RK UL 6 RK UL 6:Desktop Folder:TEMP WORK:MONTGOMERY:REVISES UPLO D CH114 FIN L:Quark Files: