Grouped feature screening for ultrahigh-dimensional classification via Gini distance correlation
Yongli Sang, Xin Dang

TL;DR
This paper introduces a model-free feature screening method for ultrahigh-dimensional classification using Gini distance correlation, capable of handling grouped features and responses with many categories, with proven theoretical properties and demonstrated effectiveness.
Contribution
The paper develops a novel Gini distance correlation-based screening method for categorical responses in high-dimensional settings, with theoretical guarantees and practical validation.
Findings
Method possesses sure screening property.
Method maintains ranking consistency.
Effective in real data applications.
Abstract
Gini distance correlation (GDC) was recently proposed to measure the dependence between a categorical variable, Y, and a numerical random vector, X. It mutually characterizes independence between X and Y. In this article, we utilize the GDC to establish a feature screening for ultrahigh-dimensional discriminant analysis where the response variable is categorical. It can be used for screening individual features as well as grouped features. The proposed procedure possesses several appealing properties. It is model-free. No model specification is needed. It holds the sure independence screening property and the ranking consistency property. The proposed screening method can also deal with the case that the response has divergent number of categories. We conduct several Monte Carlo simulation studies to examine the finite sample performance of the proposed screening procedure. Real data…
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Taxonomy
TopicsFace and Expression Recognition · Statistical Methods and Inference · Bayesian Methods and Mixture Models
