LGAIApr 17, 2025

GPMFS: Global Foundation and Personalized Optimization for Multi-Label Feature Selection

arXiv:2504.12740v11 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the bottleneck of dimensionality in multi-label learning for AI applications, offering an incremental improvement by adding personalized feature selection to existing global methods.

The paper tackles the problem of high-dimensional multi-label learning by addressing the curse of dimensionality through a novel feature selection method that combines global and personalized features, resulting in superior performance on multiple real-world datasets.

As artificial intelligence methods are increasingly applied to complex task scenarios, high dimensional multi-label learning has emerged as a prominent research focus. At present, the curse of dimensionality remains one of the major bottlenecks in high-dimensional multi-label learning, which can be effectively addressed through multi-label feature selection methods. However, existing multi-label feature selection methods mostly focus on identifying global features shared across all labels, which overlooks personalized characteristics and specific requirements of individual labels. This global-only perspective may limit the ability to capture label-specific discriminative information, thereby affecting overall performance. In this paper, we propose a novel method called GPMFS (Global Foundation and Personalized Optimization for Multi-Label Feature Selection). GPMFS firstly identifies global features by exploiting label correlations, then adaptively supplements each label with a personalized subset of discriminative features using a threshold-controlled strategy. Experiments on multiple real-world datasets demonstrate that GPMFS achieves superior performance while maintaining strong interpretability and robustness. Furthermore, GPMFS provides insights into the label-specific strength across different multi-label datasets, thereby demonstrating the necessity and potential applicability of personalized feature selection approaches.

Foundations

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