用递归中式餐厅流程建模主题层次结构

Joonyeob Kim, Dongwoo Kim, Suin Kim, Alice H. Oh
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引用次数: 53

摘要

潜在狄利克雷分配(LDA)和层次狄利克雷过程(HDP)等主题模型是从一组未注释文档中发现主题的简单解决方案。虽然LDA和HDP简单而流行,但它们的一个主要缺点是它们没有将主题组织成许多数据集中自然存在的层次结构。本文引入递归中餐馆过程(rCRP)和一个以rCRP为先验的非参数主题模型,用于发现深度和宽度无界的分层主题结构。与以前用于发现主题层次结构的模型不同,rCRP允许从层次结构中整个主题集的混合中生成文档。我们将rCRP应用于《纽约时报》文章的语料库、MovieLens评分的数据集和一组Wikipedia文章,并显示发现的主题层次结构。我们将rCRP的预测能力与LDA、HDP和嵌套中式餐厅流程(nCRP)进行比较,使用空巢似然来显示rCRP优于其他方法。我们提出了两个量化主题层次结构特征的指标,以比较已发现的rCRP和nCRP主题层次结构。结果表明,rCRP发现了一个层次结构,在这个层次结构中,主题向叶方向更加专门化,直系亲属的主题比直系亲属以外的主题表现出更强的亲和力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling topic hierarchies with the recursive chinese restaurant process
Topic models such as latent Dirichlet allocation (LDA) and hierarchical Dirichlet processes (HDP) are simple solutions to discover topics from a set of unannotated documents. While they are simple and popular, a major shortcoming of LDA and HDP is that they do not organize the topics into a hierarchical structure which is naturally found in many datasets. We introduce the recursive Chinese restaurant process (rCRP) and a nonparametric topic model with rCRP as a prior for discovering a hierarchical topic structure with unbounded depth and width. Unlike previous models for discovering topic hierarchies, rCRP allows the documents to be generated from a mixture over the entire set of topics in the hierarchy. We apply rCRP to a corpus of New York Times articles, a dataset of MovieLens ratings, and a set of Wikipedia articles and show the discovered topic hierarchies. We compare the predictive power of rCRP with LDA, HDP, and nested Chinese restaurant process (nCRP) using heldout likelihood to show that rCRP outperforms the others. We suggest two metrics that quantify the characteristics of a topic hierarchy to compare the discovered topic hierarchies of rCRP and nCRP. The results show that rCRP discovers a hierarchy in which the topics become more specialized toward the leaves, and topics in the immediate family exhibit more affinity than topics beyond the immediate family.
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