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Bayesian Sparse Topical Coding

机译:贝叶斯稀疏局部编码

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摘要

Sparse topic models (STMs) are widely used for learning a semantically rich latent sparse representation of short texts in large scale, mainly by imposing sparse priors or appropriate regularizers on topic models. However, it is difficult for these STMs to model the sparse structure and pattern of the corpora accurately, since their sparse priors always fail to achieve real sparseness, and their regularizers bypass the prior information of the relevance between sparse coefficients. In this paper, we propose a novel Bayesian hierarchical topic models called Bayesian Sparse Topical Coding with Poisson Distribution (BSTC-P) on the basis of Sparse Topical Coding with Sparse Groups (STCSG). Different from traditional STMs, it focuses on imposing hierarchical sparse prior to leverage the prior information of relevance between sparse coefficients. Furthermore, we propose a sparsity-enhanced BSTC, Bayesian Sparse Topical Coding with Normal Distribution (BSTC-N), via mathematic approximation. We adopt superior hierarchical sparse inducing prior, with the purpose of achieving the sparsest optimal solution. Experimental results on datasets of Newsgroups and Twitter show that both BSTC-P and BSTC-N have better performance on finding clear latent semantic representations. Therefore, they yield better performance than existing works on document classification tasks.
机译:稀疏主题模型(STMS)广泛用于学习大规模中的短文本的语义较丰富的潜在稀疏表示,主要是通过对主题模型的稀疏前锋或适当的常规策略来实现。然而,这些STM难以准确地模拟语料库的稀疏结构和模式,因为它们的稀疏的前沿始终无法实现真正​​的稀疏性,并且它们的常规方绕过稀疏系数之间的相关信息。在本文中,我们提出了一种新颖的贝叶斯分层主题模型,称为贝叶斯稀疏局部编码,基于具有稀疏组(STCSG)的稀疏局部编码的泊松分布(BSTC-P)。与传统的STM不同,它专注于在利用稀疏系数之间的相关性相关性之前强加分层稀疏。此外,我们提出了一种稀疏性增强的BSTC,贝叶斯稀疏的局部编码,具有正常分布(BSTC-N),通过数学近似。我们采用卓越的等级稀疏诱导,目的是实现稀有最佳解决方案。新闻组和Twitter数据集的实验结果表明,BSTC-P和BSTC-N都具有更好的性能,以找到明确的潜在语义表示。因此,它们会产生比现有文档分类任务的工作更好的性能。

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