On-line LDA: Adaptive Topic Models for Mining Text Streams with Applications to Topic Detection and Tracking

Loulwah AlSumait, Daniel Barbará, C. Domeniconi
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引用次数: 455

Abstract

This paper presents online topic model (OLDA), a topic model that automatically captures the thematic patterns and identifies emerging topics of text streams and their changes over time. Our approach allows the topic modeling framework, specifically the latent Dirichlet allocation (LDA) model, to work in an online fashion such that it incrementally builds an up-to-date model (mixture of topics per document and mixture of words per topic) when a new document (or a set of documents) appears. A solution based on the empirical Bayes method is proposed. The idea is to incrementally update the current model according to the information inferred from the new stream of data with no need to access previous data. The dynamics of the proposed approach also provide an efficient mean to track the topics over time and detect the emerging topics in real time. Our method is evaluated both qualitatively and quantitatively using benchmark datasets. In our experiments, the OLDA has discovered interesting patterns by just analyzing a fraction of data at a time. Our tests also prove the ability of OLDA to align the topics across the epochs with which the evolution of the topics over time is captured. The OLDA is also comparable to, and sometimes better than, the original LDA in predicting the likelihood of unseen documents.
在线LDA:挖掘文本流的自适应主题模型及其在主题检测和跟踪中的应用
本文提出了在线主题模型(online topic model, OLDA),它是一种自动捕获文本流的主题模式并识别文本流中新出现的主题及其随时间变化的主题模型。我们的方法允许主题建模框架,特别是潜在Dirichlet分配(LDA)模型,以在线方式工作,以便在出现新文档(或一组文档)时增量地构建最新的模型(每个文档的主题混合和每个主题的单词混合)。提出了一种基于经验贝叶斯方法的解决方案。其思想是根据从新的数据流推断出的信息增量地更新当前模型,而不需要访问以前的数据。该方法的动态性也提供了一种有效的方法,可以随时间跟踪主题并实时检测新出现的主题。我们的方法使用基准数据集进行定性和定量评估。在我们的实验中,OLDA通过一次只分析一小部分数据发现了有趣的模式。我们的测试还证明了OLDA能够跨时代对主题进行对齐,从而捕获主题随时间的演变。在预测未见文档的可能性方面,OLDA也与原始LDA相当,有时甚至比原始LDA更好。
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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