短文本的双词伪文档主题模型

Lan Jiang, Heng-yang Lu, Ming Xu, Chong-Jun Wang
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引用次数: 13

摘要

在过去的几年里,我们见证了在线社交媒体的快速发展,我们可以从中获取各种短文本。理解这些短文本的主题模式是很重要的。传统的主题模型,如LDA,由于数据的稀疏性,不适合用于短文本主题分析。为了解决这个问题已经做了很多努力。然而,这些短文本特定方法的有效性仍有很大的提高空间。本文提出了一种新的基于词共现网络的方法,即双词伪文档主题模型(BPDTM),它扩展了之前的短文本双词主题模型(BTM)。我们利用词共现网络构造双词伪文档。该模型很有前景,因为它用语义相邻的词表示词,并且能够对两个词之间的语料库级语义关系进行建模。此外,BPDTM自然地延长了文档,从而减轻了数据稀疏性对性能的影响。实验表明,该模型优于LDA和BTM两个基线,证明了该模型在短文本主题建模任务中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biterm Pseudo Document Topic Model for Short Text
In the past few years, we have witnessed a rapid development of online social media, from which we can access various short texts. Understanding the topic patterns of these short text is significant. Traditional topic models, like LDA, are not suitable when applied to short text topic analysis due to data sparsity. A lot of efforts have been made to solve this problem. However, there is still significant space to improve the effectiveness of these short text specific methods. In this paper, we proposed a novel word co-occurrence network based method, referred to as biterm pseudo document topic model (BPDTM), which extended the previous biterm topic model(BTM) for short text. We utilized the word co-occurrence network to construct biterm pseudo documents. The proposed model is promising since it represents words with their semantic adjacent biterms and is able to model the corpus-level semantic relation between two words. Besides, BPDTM naturally lengthens the documents, which alleviate the influence for performance exerted by data sparsity. Experiments demonstrated that our model outperformed two baselines, i.e. LDA and BTM, which proved its effectiveness on short text topic modeling task.
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