基于Dirichlet过程的短文本流动态聚类。

Wanyin Xu, Yun Li, Jipeng Qiang
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引用次数: 3

摘要

随着各种社交媒体平台上短文本的爆发式增长,短文本流聚类问题日益突出。与传统文本流不同,短文本流数据具有长度短、信号弱、量大、速度快、主题漂移等特点。现有的方法不能同时很好地解决两个主要问题:推断主题数量和主题漂移。为此,我们提出了一种基于Dirichlet过程(DCSS)的短文本流动态聚类算法,该算法可以自动学习文档中的主题数量,解决短文本流的主题漂移问题。为了解决短文本的稀疏性问题,DCSS考虑了相邻时间点主题分布的相关性,并将过去文档的主题分布推断为当前时刻主题分布的先验,同时允许新流文档改变主题的后验分布。我们在两个广泛使用的数据集上进行了实验,结果表明DCSS优于现有方法,并且具有更好的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Dynamic clustering for short text stream based on Dirichlet process.

Dynamic clustering for short text stream based on Dirichlet process.

Dynamic clustering for short text stream based on Dirichlet process.

Dynamic clustering for short text stream based on Dirichlet process.

Due to the explosive growth of short text on various social media platforms, short text stream clustering has become an increasingly prominent issue. Unlike traditional text streams, short text stream data present the following characteristics: short length, weak signal, high volume, high velocity, topic drift, etc. Existing methods cannot simultaneously address two major problems very well: inferring the number of topics and topic drift. Therefore, we propose a dynamic clustering algorithm for short text streams based on the Dirichlet process (DCSS), which can automatically learn the number of topics in documents and solve the topic drift problem of short text streams. To solve the sparsity problem of short texts, DCSS considers the correlation of the topic distribution at neighbouring time points and uses the inferred topic distribution of past documents as a prior of the topic distribution at the current moment while simultaneously allowing newly streamed documents to change the posterior distribution of topics. We conduct experiments on two widely used datasets, and the results show that DCSS outperforms existing methods and has better stability.

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