Topical N-Grams: Phrase and Topic Discovery, with an Application to Information Retrieval

Xuerui Wang, A. McCallum, Xing Wei
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引用次数: 519

Abstract

Most topic models, such as latent Dirichlet allocation, rely on the bag-of-words assumption. However, word order and phrases are often critical to capturing the meaning of text in many text mining tasks. This paper presents topical n-grams, a topic model that discovers topics as well as topical phrases. The probabilistic model generates words in their textual order by, for each word, first sampling a topic, then sampling its status as a unigram or bigram, and then sampling the word from a topic-specific unigram or bigram distribution. Thus our model can model "white house" as a special meaning phrase in the 'politics' topic, but not in the 'real estate' topic. Successive bigrams form longer phrases. We present experiments showing meaningful phrases and more interpretable topics from the NIPS data and improved information retrieval performance on a TREC collection.
主题N-Grams:短语和主题发现及其在信息检索中的应用
大多数主题模型,如潜在狄利克雷分配,都依赖于词袋假设。然而,在许多文本挖掘任务中,词序和短语通常对捕获文本的含义至关重要。本文提出了一个主题n-grams模型,它可以发现主题和主题短语。概率模型按文本顺序生成单词,方法是对每个单词首先对一个主题进行采样,然后将其状态采样为单图或双图,然后从特定于主题的单图或双图分布中对单词进行采样。因此,我们的模型可以将“white house”建模为“政治”主题中的特殊含义短语,而不是“房地产”主题中的特殊含义短语。连续的双字母构成更长的短语。我们的实验展示了NIPS数据中有意义的短语和更多可解释的主题,并改进了TREC集合上的信息检索性能。
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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