Purposeful selection of variables in logistic regression
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Open Access
- 16 December 2008
- journal article
- Published by Springer Nature in Source Code for Biology and Medicine
- Vol. 3 (1) , 17
- https://doi.org/10.1186/1751-0473-3-17
Abstract
The main problem in many model-building situations is to choose from a large set of covariates those that should be included in the "best" model. A decision to keep a variable in the model might be based on the clinical or statistical significance. There are several variable selection algorithms in existence. Those methods are mechanical and as such carry some limitations. Hosmer and Lemeshow describe a purposeful selection of covariates within which an analyst makes a variable selection decision at each step of the modeling process.Keywords
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