On variable selection in generalized linear and related regression models |
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Authors: | Lennart Nordberg |
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Affiliation: | Department of Mathematics , Royal Institute of Technology , Stockholm, S-10044, Sweden |
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Abstract: | This paper is concerned with selection of explanatory variables in generalized linear models (GLM). The class of GLM's is quite large and contains e.g. the ordinary linear regression, the binary logistic regression, the probit model and Poisson regression with linear or log-linear parameter structure. We show that, through an approximation of the log likelihood and a certain data transformation, the variable selection problem in a GLM can be converted into variable selection in an ordinary (unweighted) linear regression model. As a consequence no specific computer software for variable selection in GLM's is needed. Instead, some suitable variable selection program for linear regression can be used. We also present a simulation study which shows that the log likelihood approximation is very good in many practical situations. Finally, we mention briefly possible extensions to regression models outside the class of GLM's. |
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Keywords: | variable selection non-normal regression logit analysis probit analysis Poisson regression generalized linear models |
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