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Query Oriented Topical Clusters Detection for Top-k Trending Topics in Twitter

机译:查询Twitter中的Top-K Trending主题检测

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This paper tackles the problem of detecting temporal query oriented topical clusters for top-k trending topics from Twitter in real time. There is an increasing demand to identify and cluster set of users who have similar topical interests as well as certain level of activeness on those topics. Most existing approaches focus on the contents generated by the social users and/or link structure of the underlying social network. However, the degree of users’ topical activeness has not been thoroughly studied to identify its effect on the formation of topical clusters. This research investigates on how online social users’ behaviors and topical activeness vary with time and how these parameters can be employed in order to improve the quality of the detected topical clusters for top-k trending topics at different time intervals. The effectiveness of our proposed activity biased weight methodology is justified using a benchmark Twitter dataset.
机译:本文解决了从Twitter实时检测Top-K趋势主题的时间查询导向主题群的问题。越来越多的需求来识别和群集具有类似主题兴趣的用户以及这些主题的一定程度的激活用户。大多数现有方法专注于社会用户和/或基础社交网络的链接结构生成的内容。然而,用户的局部激活度尚未彻底研究了对局部簇形成的影响。本研究调查了在线社会用户的行为和主题激活率如何随时间而变化以及如何采用这些参数,以便以不同的时间间隔提高检测到的局部簇的质量。我们提出的活动偏置重量方法的有效性是使用基准推特数据集进行的辩护。

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