Please use this identifier to cite or link to this item: https://research.matf.bg.ac.rs/handle/123456789/3235
Title: Sure Screening with Kernel-Based Distance Correlation: Methodology and Applications
Authors: Milošević, Bojana 
Radojević, Jelena 
Affiliations: Probability and Statistics 
Keywords: distance correlation;circular data;hyperspherical data;sure screening;model-free selection
Issue Date: 2025
Rank: M22
Publisher: Lisbon : Instituto Nacional de Estatistica
Journal: REVSTAT - Statistical Journal
Abstract: 
We consider a generalized kernel-based distance correlation measure for feature screening in high-dimensional settings. Theoretical results establish the sure screening property under mild regularity conditions for a class of negative-definite kernels. The method is flexible, requiring minimal distributional assumptions, and can be naturally extended to multivariate responses and grouped features. Extensive simulation studies confirm its robustness and effectiveness, while applications to real-world biomedical datasets demonstrate its practical relevance. The results highlight the potential of kernel-based distance measures as a powerful and scalable tool for variable selection in complex data environments.
URI: https://research.matf.bg.ac.rs/handle/123456789/3235
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