基于循环语义依赖CRP的社交媒体短文本主题演化建模

Yuhao Zhang, W. Mao, D. Zeng
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引用次数: 1

摘要

社交媒体已经成为人们表达意见、分享信息和与他人交流的重要平台。从社交媒体中检测和跟踪话题可以帮助人们掌握重要信息,并促进许多与安全相关的应用。由于社交媒体文本通常较短,基于LDA或HDP构建的传统主题演化模型往往存在数据稀疏性问题。目前提出的主题演化模型更适合短文本,但需要人工指定不同时间段固定的主题数。为了解决这些问题,本文提出了一个社交媒体短文本的非参数主题演化模型。我们首先提出了递归语义依赖中餐馆过程(rsdCRP),这是一个结合词嵌入的非参数过程,以捕获语义相似信息。然后将rsdCRP与词共现建模相结合,构建了面向短文本的主题演化模型系统。我们对Twitter数据集进行了实验研究。结果表明,与基线方法相比,我们的方法监测社交媒体话题演变的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic evolution modeling in social media short texts based on recurrent semantic dependent CRP
Social media has become an important platform for people to express opinions, share information and communicate with others. Detecting and tracking topics from social media can help people grasp essential information and facilitate many security-related applications. As social media texts are usually short, traditional topic evolution models built based on LDA or HDP often suffer from the data sparsity problem. Recently proposed topic evolution models are more suitable for short texts, but they need to manually specify topic number which is fixed during different time period. To address these issues, in this paper, we propose a nonparametric topic evolution model for social media short texts. We first propose the recurrent semantic dependent Chinese restaurant process (rsdCRP), which is a nonparametric process incorporating word embeddings to capture semantic similarity information. Then we combine rsdCRP with word co-occurrence modeling and build our short-text oriented topic evolution model sdTEM. We carry out experimental studies on Twitter dataset. The results demonstrate the effectiveness of our method to monitor social media topic evolution compared to the baseline methods.
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