Tracking and Connecting Topics via Incremental Hierarchical Dirichlet Processes

Zekai J. Gao, Yangqiu Song, Shixia Liu, Haixun Wang, Hao Wei, Yang Chen, Weiwei Cui
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引用次数: 42

Abstract

Much research has been devoted to topic detection from text, but one major challenge has not been addressed: revealing the rich relationships that exist among the detected topics. Finding such relationships is important since many applications are interested in how topics come into being, how they develop, grow, disintegrate, and finally disappear. In this paper, we present a novel method that reveals the connections between topics discovered from the text data. Specifically, our method focuses on how one topic splits into multiple topics, and how multiple topics merge into one topic. We adopt the hierarchical Dirichlet process (HDP) model, and propose an incremental Gibbs sampling algorithm to incrementally derive and refine the labels of clusters. We then characterize the splitting and merging patterns among clusters based on how labels change. We propose a global analysis process that focuses on cluster splitting and merging, and a finer granularity analysis process that helps users to better understand the content of the clusters and the evolution patterns. We also develop a visualization process to present the results.
通过增量层次狄利克雷过程跟踪和连接主题
很多研究都致力于从文本中检测主题,但是一个主要的挑战还没有解决:揭示被检测主题之间存在的丰富关系。找到这样的关系很重要,因为许多应用程序都对主题如何产生、如何发展、增长、分解和最终消失感兴趣。在本文中,我们提出了一种新的方法来揭示从文本数据中发现的主题之间的联系。具体来说,我们的方法关注的是一个主题如何分裂成多个主题,以及多个主题如何合并成一个主题。采用层次Dirichlet过程(HDP)模型,提出了一种增量Gibbs采样算法,对聚类标签进行增量导出和细化。然后,我们根据标签的变化来描述集群之间的分裂和合并模式。我们提出了一个专注于集群分裂和合并的全局分析过程,以及一个更细粒度的分析过程,帮助用户更好地理解集群的内容和演化模式。我们还开发了一个可视化过程来呈现结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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