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Debiasing Community Detection: The Importance of Lowly Connected Nodes

机译:消除社区检测的偏见:低连接节点的重要性

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Community detection is an important task in social network analysis, allowing us to identify and understand the communities within the social structures provided by the network. However, many community detection approaches either fail to assign low-degree (or lowly connected) users to communities, or assign them to trivially small communities that prevent them from being included in analysis. In this work we investigate how excluding these users can bias analysis results. We then introduce an approach that is more inclusive for lowly connected users by incorporating them into larger groups. Experiments show that our approach outperforms the existing state-of-the-art in terms of F1 and Jaccard similarity scores while reducing the bias towards low-degree users.
机译:社区检测是社会网络分析中的一项重要任务,它使我们能够识别和了解网络提供的社会结构内的社区。但是,许多社区检测方法要么无法将低度(或低连接)的用户分配给社区,要么无法将他们分配给琐碎的小社区,从而阻止他们被纳入分析。在这项工作中,我们研究了排除这些用户如何使分析结果有偏差。然后,我们将低连接的用户合并到更大的组中,从而为低连接的用户引入一种更具包容性的方法。实验表明,我们的方法在F1和Jaccard相似度评分方面优于现有的最新技术,同时减少了对低度用户的偏见。

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