Variable selection in partial linear regression using the least angle regression

KOREAN JOURNAL OF APPLIED STATISTICS(2021)

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摘要
The problem of selecting variables is addressed in partial linear regression. Model selection for partial linear models is not easy since it involves nonparametric estimation such as smoothing parameter selection and estimation for linear explanatory variables. In this work, several approaches for variable selection are proposed using a fast forward selection algorithm, least angle regression (LARS). The proposed procedures use t-test, all possible regressions comparisons or stepwise selection process with variables selected by LARS. An example based on real data and a simulation study on the performance of the suggested procedures are presented.
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关键词
least angle regression, partial linear models, sequential selection, variable selection
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