cs.AI updates on arXiv.org 10月08日
LLM-FS-Agent:可解释的机器学习特征选择新架构
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本文提出了一种名为LLM-FS-Agent的多代理架构,用于可解释且鲁棒的机器学习特征选择。该系统通过多个LLM代理的辩论机制,评估特征相关性并生成详细解释。实验表明,LLM-FS-Agent在网络安全领域实现优越或相当的分类性能,平均降低下游训练时间46%,显著提升决策透明度和计算效率。

arXiv:2510.05935v1 Announce Type: cross Abstract: High-dimensional data remains a pervasive challenge in machine learning, often undermining model interpretability and computational efficiency. While Large Language Models (LLMs) have shown promise for dimensionality reduction through feature selection, existing LLM-based approaches frequently lack structured reasoning and transparent justification for their decisions. This paper introduces LLM-FS-Agent, a novel multi-agent architecture designed for interpretable and robust feature selection. The system orchestrates a deliberative "debate" among multiple LLM agents, each assigned a specific role, enabling collective evaluation of feature relevance and generation of detailed justifications. We evaluate LLM-FS-Agent in the cybersecurity domain using the CIC-DIAD 2024 IoT intrusion detection dataset and compare its performance against strong baselines, including LLM-Select and traditional methods such as PCA. Experimental results demonstrate that LLM-FS-Agent consistently achieves superior or comparable classification performance while reducing downstream training time by an average of 46% (statistically significant improvement, p = 0.028 for XGBoost). These findings highlight that the proposed deliberative architecture enhances both decision transparency and computational efficiency, establishing LLM-FS-Agent as a practical and reliable solution for real-world applications.

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LLM-FS-Agent 机器学习 特征选择 可解释性 计算效率
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