Topic Modeling Using Latent Dirichlet allocation

Uttam Chauhan, Apurva Shah
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引用次数: 72

Abstract

We are not able to deal with a mammoth text corpus without summarizing them into a relatively small subset. A computational tool is extremely needed to understand such a gigantic pool of text. Probabilistic Topic Modeling discovers and explains the enormous collection of documents by reducing them in a topical subspace. In this work, we study the background and advancement of topic modeling techniques. We first introduce the preliminaries of the topic modeling techniques and review its extensions and variations, such as topic modeling over various domains, hierarchical topic modeling, word embedded topic models, and topic models in multilingual perspectives. Besides, the research work for topic modeling in a distributed environment, topic visualization approaches also have been explored. We also covered the implementation and evaluation techniques for topic models in brief. Comparison matrices have been shown over the experimental results of the various categories of topic modeling. Diverse technical challenges and future directions have been discussed.
基于潜在狄利克雷分配的主题建模
如果不将它们总结成一个相对较小的子集,我们就无法处理庞大的文本语料库。要理解如此庞大的文本库,极其需要一种计算工具。概率主题建模通过在主题子空间中约简来发现和解释大量的文档集合。在这项工作中,我们研究了主题建模技术的背景和进展。我们首先介绍了主题建模技术的基础知识,并回顾了其扩展和变体,如不同领域的主题建模、分层主题建模、词嵌入主题模型和多语言视角的主题模型。此外,还对分布式环境下的主题建模、主题可视化方法进行了研究。我们还简要介绍了主题模型的实现和评估技术。对各类主题建模的实验结果给出了比较矩阵。讨论了各种技术挑战和未来方向。
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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