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Main Authors: Bacci, Silvia, Dreassi, Emanuela, Grilli, Leonardo, Rampichini, Carla
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.06138
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author Bacci, Silvia
Dreassi, Emanuela
Grilli, Leonardo
Rampichini, Carla
author_facet Bacci, Silvia
Dreassi, Emanuela
Grilli, Leonardo
Rampichini, Carla
contents Large-scale assessment data typically include numerous categorical variables, often affected by missing values. Motivated by the challenges arising in this framework, we extend the knockoffs method for selecting predictors to settings with missing values. Our proposal relies on a preliminary phase consisting of multiple imputations of missing values. Each imputed dataset is then processed using a suitable knockoff filter. We evaluate the performance of the proposed method through a simulation study, showing satisfactory results consistent with a recently advocated cutting-edge method. We apply the method to large-scale assessment data collected by INVALSI about test scores of Italian students in grade 5 with many background variables. This case study is challenging, as most predictors have unordered categories, a setting not taken into account by traditional knockoffs methods. In addition, some of the key predictors are affected by missing values. The model includes random effects to account for the multilevel structure of students nested into schools. Our proposal to implement the knockoffs method within a multiple imputation framework proves to be feasible, flexible and effective.
format Preprint
id arxiv_https___arxiv_org_abs_2508_06138
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Variable selection via knockoffs in missing data settings with categorical predictors
Bacci, Silvia
Dreassi, Emanuela
Grilli, Leonardo
Rampichini, Carla
Methodology
Large-scale assessment data typically include numerous categorical variables, often affected by missing values. Motivated by the challenges arising in this framework, we extend the knockoffs method for selecting predictors to settings with missing values. Our proposal relies on a preliminary phase consisting of multiple imputations of missing values. Each imputed dataset is then processed using a suitable knockoff filter. We evaluate the performance of the proposed method through a simulation study, showing satisfactory results consistent with a recently advocated cutting-edge method. We apply the method to large-scale assessment data collected by INVALSI about test scores of Italian students in grade 5 with many background variables. This case study is challenging, as most predictors have unordered categories, a setting not taken into account by traditional knockoffs methods. In addition, some of the key predictors are affected by missing values. The model includes random effects to account for the multilevel structure of students nested into schools. Our proposal to implement the knockoffs method within a multiple imputation framework proves to be feasible, flexible and effective.
title Variable selection via knockoffs in missing data settings with categorical predictors
topic Methodology
url https://arxiv.org/abs/2508.06138