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Discovering socially similar users in social media datasets based on their socially important locations

机译:根据社交媒体用户的重要社交位置在社交媒体数据集中发现他们

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摘要

Socially similar social media users can be defined as users whose frequently visited locations in their social media histories are similar. Discovering socially similar social media users is important for several applications, such as, community detection, friendship analysis, location recommendation, urban planning, and anomaly user and behavior detection. Discovering socially similar users is challenging due to dataset size and dimensions, spam behaviors of social media users, spatial and temporal aspects of social media datasets, and location sparseness in social media datasets. In the literature, several studies are conducted to discover similar social media users out of social media datasets using spatial and temporal information. However, most of these studies rely on trajectory pattern mining methods or take into account semantic information of social media datasets. Limited number of studies focus on discovering similar users based on their social media location histories. In this study, to discover socially similar users, frequently visited or socially important locations of social media users are taken into account instead of all locations that users visited. A new interest measure, which is based on Levenshtein distance, was proposed to quantify user similarity based on their socially important locations and two algorithms were developed using the proposed method and interest measure. The algorithms were experimentally evaluated on a real-life Twitter dataset. The results show that the proposed algorithms could successfully discover similar social media users based on their socially important locations.
机译:可以将社交相似的社交媒体用户定义为在其社交媒体历史中经常访问的位置相似的用户。发现社交相似的社交媒体用户对于多种应用非常重要,例如社区检测,友谊分析,位置推荐,城市规划以及异常用户和行为检测。由于数据集的大小和尺寸,社交媒体用户的垃圾邮件行为,社交媒体数据集的空间和时间方面以及社交媒体数据集中的位置稀疏性,发现社交相似的用户具有挑战性。在文献中,进行了一些研究,以使用时空信息从社交媒体数据集中发现相似的社交媒体用户。但是,这些研究大多数依赖于轨迹模式挖掘方法或考虑了社交媒体数据集的语义信息。数量有限的研究专注于根据相似用户的社交媒体位置历史发现他们。在这项研究中,为了发现社交相似的用户,考虑了社交媒体用户的经常访问或社交上重要的位置,而不是考虑用户访问的所有位置。提出了一种基于Levenshtein距离的新兴趣度量,用于基于用户的社会重要位置来量化用户相似度,并使用提出的方法和兴趣度量开发了两种算法。该算法在真实的Twitter数据集上进行了实验评估。结果表明,所提出的算法可以根据相似的社交媒体用户的重要位置成功发现他们。

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