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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >An incremental community detection method for social tagging systems using locality-sensitive hashing
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An incremental community detection method for social tagging systems using locality-sensitive hashing

机译:使用位置敏感散列的社交标记系统增量社区检测方法

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摘要

An increasing number of users interact, collaborate, and share information through social networks. Unprecedented growth in social networks is generating a significant amount of unstructured social data. From such data, distilling communities where users have common interests and tracking variations of users' interests over time are important research tracks in fields such as opinion mining, trend prediction, and personalized services. However, these tasks are extremely difficult considering the highly dynamic characteristics of the data. Existing community detection methods are time consuming, making it difficult to process data in real time. In this paper, dynamic unstructured data is modeled as a stream. Tag assignments stream clustering (TASC), an incremental scalable community detection method, is proposed based on locality-sensitive hashing. Both tags and latent interactions among users are incorporated in the method. In our experiments, the social dynamic behaviors of users are first analyzed. The proposed TASC method is then compared with state-of-the-art clustering methods such as StreamKmeans and incremental k-clique; results indicate that TASC can detect communities more efficiently and effectively.
机译:越来越多的用户通过社交网络互动,协作和共享信息。社交网络中前所未有的增长正在产生大量的非结构化社会数据。从这些数据中,蒸馏社区,用户随着时间的推移,用户具有共同的利益和跟踪用户兴趣的变化,是意见挖掘,趋势预测和个性化服务等领域的重要研究轨道。然而,考虑到数据的高度动态特性,这些任务非常困难。现有的社区检测方法是耗时的,使得难以实时处理数据。在本文中,动态非结构化数据被建模为流。标签分配流群集(TASC),基于位置敏感散列提出增量可伸缩的社区检测方法。在该方法中结合了用户之间的标签和潜在的相互作用。在我们的实验中,首次分析了用户的社会动态行为。然后将拟议的Tasc方法与最先进的聚类方法进行比较,例如Streamkemeans和增量K-Clique;结果表明,TSC可以更有效地检测社区。

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