My.stepwise - Stepwise Variable Selection Procedures for Regression Analysis
The stepwise variable selection procedure (with iterations
between the 'forward' and 'backward' steps) can be used to
obtain the best candidate final regression model in regression
analysis. All the relevant covariates are put on the 'variable
list' to be selected. The significance levels for entry (SLE)
and for stay (SLS) are usually set to 0.15 (or larger) for
being conservative. Then, with the aid of substantive
knowledge, the best candidate final regression model is
identified manually by dropping the covariates with p value >
0.05 one at a time until all regression coefficients are
significantly different from 0 at the chosen alpha level of
0.05.