Ca-MCF: Category-level Multi-label Causal Feature selection

📅 2026-02-13
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📝 Abstract
Multi-label causal feature selection has attracted extensive attention in recent years. However, current methods primarily operate at the label level, treating each label variable as a monolithic entity and overlooking the fine-grained causal mechanisms unique to individual categories. To address this, we propose a Category-level Multi-label Causal Feature selection method named Ca-MCF. Ca-MCF utilizes label category flattening to decompose label variables into specific category nodes, enabling precise modeling of causal structures within the label space. Furthermore, we introduce an explanatory competition-based category-aware recovery mechanism that leverages the proposed Specific Category-Specific Mutual Information (SCSMI) and Distinct Category-Specific Mutual Information (DCSMI) to salvage causal features obscured by label correlations. The method also incorporates structural symmetry checks and cross-dimensional redundancy removal to ensure the robustness and compactness of the identified Markov Blankets. Extensive experiments across seven real-world datasets demonstrate that Ca-MCF significantly outperforms state-of-the-art benchmarks, achieving superior predictive accuracy with reduced feature dimensionality.
Problem

Research questions and friction points this paper is trying to address.

multi-label
causal feature selection
category-level
label correlations
Markov Blanket
Innovation

Methods, ideas, or system contributions that make the work stand out.

Category-level causal feature selection
Label category flattening
Specific Category-Specific Mutual Information (SCSMI)
Markov Blanket
Multi-label learning
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Wanfu Gao
College of Computer Science and Technology, Jilin University, Changchun, China
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Yanan Wang
College of Computer Science and Technology, Jilin University, Changchun, China
Yonghao Li
Yonghao Li
Southwestern University of Finance and Economics
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