Paired feature constraints for latent dirichlet topic models

Bhattu Nagesh, Sristy, D. Somayajulu, R. Subramanyam, Phd Student
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引用次数: 1

Abstract

Non Parametric Bayes models, so called family of Latent Dirichlet Allocation (LDA) Topic Models have found application in various aspects of pattern recognition like sentiment analysis, information retrieval, question answering etc. The topics induced by LDA are used for later tasks such as classification, regression(movie ratings), ranking and recommendation. Recently various approaches are suggested to improve the utility of topics induced by LDA using various side-information such as labeled examples and labeled features. Pair-Wise feature constraints such as cannot-link and must-link, represent weak-supervision and are prevalent in domains such as sentiment analysis. Though must-link constraints are relatively easier to incorporate by using dirichlet tree, the cannot-link constraints are harder to incorporate using the dirichlet forest. In this paper we proposed an approach to address this problem using posterior constraints. We introduced additional latent variables for capturing the constraints, and modified the gibbs sampling algorithm to incorporate these constraints. Our method of Posterior Regularization has enabled us to deal with both types of constraints seamlessly in the same optimization framework. We have demonstrated our approach on a product sentiment review data set which is typically used in text analysis.
潜在dirichlet主题模型的配对特征约束
非参数贝叶斯模型,也称为潜狄利克雷分配(LDA)主题模型族,已经在模式识别的各个方面得到了应用,如情感分析、信息检索、问答等。LDA诱导的主题用于后面的任务,如分类、回归(电影评级)、排名和推荐。近年来,人们提出了各种方法来提高LDA诱导的主题的实用性,这些方法使用了各种侧信息,如标记样例和标记特征。对明智的特征约束,如不能链接和必须链接,代表弱监督,在情感分析等领域很普遍。虽然使用狄利克雷树合并必须链接约束相对容易,但使用狄利克雷森林合并不能链接约束比较困难。在本文中,我们提出了一种使用后验约束来解决这个问题的方法。我们引入了额外的潜在变量来捕获约束,并修改了gibbs抽样算法以包含这些约束。我们的后验正则化方法使我们能够在相同的优化框架中无缝地处理这两种类型的约束。我们已经在一个通常用于文本分析的产品情感评论数据集上展示了我们的方法。
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