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Main Authors: Rossell, David, Kseung, Arnold Kisuk, Saez, Ignacio, Guindani, Michele
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2401.10235
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author Rossell, David
Kseung, Arnold Kisuk
Saez, Ignacio
Guindani, Michele
author_facet Rossell, David
Kseung, Arnold Kisuk
Saez, Ignacio
Guindani, Michele
contents Local variable selection aims to test for the effect of covariates on an outcome within specific regions. We outline a challenge that arises in the presence of non-linear effects and model misspecification. Specifically, for common semi-parametric methods even slight model misspecification can result in a high false positive rate, in a manner that is highly sensitive to the chosen basis functions. We propose a methodology based on orthogonal cut splines that avoids false positive inflation for any choice of knots, and achieves consistent local variable selection. Our approach offers simplicity, handles both continuous and categorical covariates, and provides theory for high-dimensional covariates and model misspecification. We discuss settings with either independent or dependent data. Our proposal allows including adjustment covariates that do not undergo selection, enhancing the model's flexibility. Our examples describe salary gaps associated with various discrimination factors at different ages, and the effects of covariates on functional data measuring brain activation at different times.
format Preprint
id arxiv_https___arxiv_org_abs_2401_10235
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Semi-parametric local variable selection under misspecification
Rossell, David
Kseung, Arnold Kisuk
Saez, Ignacio
Guindani, Michele
Methodology
Local variable selection aims to test for the effect of covariates on an outcome within specific regions. We outline a challenge that arises in the presence of non-linear effects and model misspecification. Specifically, for common semi-parametric methods even slight model misspecification can result in a high false positive rate, in a manner that is highly sensitive to the chosen basis functions. We propose a methodology based on orthogonal cut splines that avoids false positive inflation for any choice of knots, and achieves consistent local variable selection. Our approach offers simplicity, handles both continuous and categorical covariates, and provides theory for high-dimensional covariates and model misspecification. We discuss settings with either independent or dependent data. Our proposal allows including adjustment covariates that do not undergo selection, enhancing the model's flexibility. Our examples describe salary gaps associated with various discrimination factors at different ages, and the effects of covariates on functional data measuring brain activation at different times.
title Semi-parametric local variable selection under misspecification
topic Methodology
url https://arxiv.org/abs/2401.10235