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Group Fairness Metrics for Community Detection Methods in Social Networks

Group Fairness Metrics for Community Detection Methods in Social Networks

来源:Arxiv_logoArxiv
英文摘要

Understanding community structure has played an essential role in explaining network evolution, as nodes join communities which connect further to form large-scale complex networks. In real-world networks, nodes are often organized into communities based on ethnicity, gender, race, or wealth, leading to structural biases and inequalities. Community detection (CD) methods use network structure and nodes' attributes to identify communities, and can produce biased outcomes if they fail to account for structural inequalities, especially affecting minority groups. In this work, we propose group fairness metrics ($\Phi^{F*}_{p}$) to evaluate CD methods from a fairness perspective. We also conduct a comparative analysis of existing CD methods, focusing on the performance-fairness trade-off, to determine whether certain methods favor specific types of communities based on their size, density, or conductance. Our findings reveal that the trade-off varies significantly across methods, with no specific type of method consistently outperforming others. The proposed metrics and insights will help develop and evaluate fair and high performing CD methods.

Elze de Vink、Akrati Saxena

信息传播、知识传播科学、科学研究计算技术、计算机技术

Elze de Vink,Akrati Saxena.Group Fairness Metrics for Community Detection Methods in Social Networks[EB/OL].(2024-10-07)[2025-08-02].https://arxiv.org/abs/2410.05487.点此复制

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