评估在Reddit上检测破坏性用户的时间和空间特征

James R. Ashford, Liam D. Turner, R. Whitaker, A. Preece, Diane H Felmlee
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引用次数: 2

摘要

网络喷子、回声室和一般的可疑行为是一个严重的问题,因为它们在社交媒体之外的潜在破坏性影响。这促使人们更好地理解互联网上破坏性行为的特征和检测方法。在这项工作中,我们专注于Reddit,它为社区互动提供了丰富的社交媒体平台。使用用户活动的网络表示以及时间统计和其他特征,我们根据分配的评论业力(用户评论赞成投票的总和)相对于更广泛的人群,评估潜在破坏性用户样本的行为。我们探讨了这些信号如何有助于对破坏性用户的准确预测,并注意到这是在不需要任何语义分析的情况下实现的。我们的研究结果表明,使用有限的输入(主要基于用户生成的回复模式),以良好的准确性检测破坏性行为的迹象是可能的。这对于大规模检测问题和跨语言操作具有潜在价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing temporal and spatial features in detecting disruptive users on Reddit
Trolling, echo chambers and general suspicious behaviour online are a serious cause of concern due to their potential disruptive effects beyond social media. This motivates a better understanding of the characteristics of disruptive behaviour on the internet and methods of detection. In this work we focus on Reddit which provides a rich social media platform for community focused interactions. Using network representations of user activity alongside temporal statistics and other features we assess the behaviour of a sample of potentially disruptive users, based on their assigned comment karma (an aggregate of a user's comment up-votes), relative to the wider population. We explore how these signals contribute to the accurate prediction of disruptive users, and note that this is achieved without requiring any semantic analysis. Our results show that it is possible to detect signs of disruptive behaviour with good accuracy using limited inputs that are primarily based on the reply patterns that users generate. This is of potential value for large-scale detection problems and operation across different languages.
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