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Autore principale: Zhang, Qingyang
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.13454
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author Zhang, Qingyang
author_facet Zhang, Qingyang
contents In this paper, we extend distance correlation to categorical data with general encodings, such as one-hot encoding for nominal variables and semicircle encoding for ordinal variables. Unlike existing methods, our approach leverages the spacing information between categories, which enhances the performance of distance correlation. Two estimates including the maximum likelihood estimate and a bias-corrected estimate are given, together with their limiting distributions under the null and alternative hypotheses. Furthermore, we establish the sure screening property for high-dimensional categorical data under mild conditions. We conduct a simulation study to compare the performance of different encodings, and illustrate their practical utility using the 2018 General Social Survey data.
format Preprint
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publishDate 2026
record_format arxiv
spellingShingle Categorical distance correlation under general encodings and its application to high-dimensional feature screening
Zhang, Qingyang
Methodology
In this paper, we extend distance correlation to categorical data with general encodings, such as one-hot encoding for nominal variables and semicircle encoding for ordinal variables. Unlike existing methods, our approach leverages the spacing information between categories, which enhances the performance of distance correlation. Two estimates including the maximum likelihood estimate and a bias-corrected estimate are given, together with their limiting distributions under the null and alternative hypotheses. Furthermore, we establish the sure screening property for high-dimensional categorical data under mild conditions. We conduct a simulation study to compare the performance of different encodings, and illustrate their practical utility using the 2018 General Social Survey data.
title Categorical distance correlation under general encodings and its application to high-dimensional feature screening
topic Methodology
url https://arxiv.org/abs/2601.13454