cs.AI updates on arXiv.org 07月08日 13:53
An Efficient Local Search Approach for Polarized Community Discovery in Signed Networks
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本文提出一种识别极化社区的方法,解决现有算法产生大小不平衡问题,并设计首个适用于含中性节点的局部搜索算法,实验表明该方法在解的质量和计算效率上均优于现有基准。

arXiv:2502.02197v2 Announce Type: replace-cross Abstract: Signed networks, where edges are labeled as positive or negative to represent friendly or antagonistic interactions, offer a natural framework for analyzing polarization, trust, and conflict in social systems. Detecting meaningful group structures in such networks is crucial for understanding online discourse, political divisions, and trust dynamics. A key challenge is to identify communities that are internally cohesive and externally antagonistic, while allowing for neutral or unaligned vertices. In this paper, we propose a method for identifying $k$ polarized communities that addresses a major limitation of prior methods: their tendency to produce highly size-imbalanced solutions. We introduce a novel optimization objective that avoids such imbalance. In addition, it is well known that approximation algorithms based on local search are highly effective for clustering signed networks when neutral vertices are not allowed. We build on this idea and design the first local search algorithm that extends to the setting with neutral vertices while scaling to large networks. By connecting our approach to block-coordinate Frank-Wolfe optimization, we prove a linear convergence rate, enabled by the structure of our objective. Experiments on real-world and synthetic datasets demonstrate that our method consistently outperforms state-of-the-art baselines in solution quality, while remaining competitive in computational efficiency.

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极化社区 算法 社交网络 优化 聚类
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