demonstration of weaknesses in stepwise variable selection
Looking forward to it ... KIM Malaysia
On Wed, Oct 3, 2018 at 10:32 AM Jeff Laux <jefflaux at gmail.com> wrote:
Although no code is given, it can be inferred from this:
https://stats.stackexchange.com/a/179945/
Best, Jeff
On 10/2/2018 11:54 AM, R. Mark Sharp wrote:
I am developing a short presentation for people with applied statistical
backgrounds who have used backward stepwise variable selection where they remove variables based on small coefficient values, coefficient P values > 0.05, and large variances.
I am wanting to provide some demonstration code in R that highlights
some of the weakness as described by Frank Harrell (citation below).
Of particular interest are (1) failure to include informative predictor
variables (categorical and continuous) and (2) lowered standard errors for the coefficients in the final model. I have code to demonstrate inclusion of too many false predictors.
I expect this code is available, but I have not found it. Guidance would
be appreciated.
Mark P.S. I have started a public github package at
I has very little in it thus far. Frank E. Harrell. Regression Modeling Strategies with applications to
linear models, logistic regression, and survival analysis, Springer Series in Statistics. Springer-Verlag. 2015.
R. Mark Sharp, Ph.D. Data Scientist and Biomedical Statistical Consultant 7526 Meadow Green St. San Antonio, TX 78251 mobile: 210-218-2868 rmsharp at me.com
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