Data analysts are often confronted with a set of few measured independent variables and are to choose the “best” predictive equation. Not infrequently, such an analysis consists of taking the measured...


Data analysts are often confronted with a set of few measured independent variables and are to choose the “best” predictive equation. Not infrequently, such an analysis consists of taking the measured variables, their pairwise cross-products, and their squares; throwing the whole lot into a computer; and using a variable selection method (usually stepwise regression) to select the best model. Using the data for the urinary calcium study in Problems 2.6, 3.8, 5.5, and 6.4 (data in Table D-5, Appendix D), do such an analysis using several variable selection methods. Do the methods agree? Is there a problem with multicollinearity, and, if so, to what extent can it explain problems with variable selection? Does centering help? Is this “throw a whole bunch of things in the computer and stir” approach useful?



May 07, 2022
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