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The Hidden Markov Topic Model: A Probabilistic Model of Semantic Representation

机译:隐马尔可夫主题模型:语义表示的概率模型

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摘要

In this paper, we describe a model that learns semantic representations from the distributional statistics of language. This model, however, goes beyond the common bag-of-words paradigm, and infers semantic representations by taking into account the inherent sequential nature of linguistic data. The model we describe, which we refer to as a Hidden Markov Topics model, is a natural extension of the current state of the art in Bayesian bag-of-words models, that is, the Topics model of Griffiths, Steyvers, and Tenenbaum (2007), preserving its strengths while extending its scope to incorporate more fine-grained linguistic information.
机译:在本文中,我们描述了一个从语言的分布统计中学习语义表示的模型。但是,该模型超越了常用的词袋范例,并且通过考虑语言数据的固有顺序性质来推断语义表示。我们描述的模型(称为“隐马尔可夫主题”模型)是对贝叶斯词袋模型(即Griffiths,Steyvers和Tenenbaum的Topics模型)的现有技术的自然扩展。 (2007年),在保留其优势的同时扩大范围以包含更多细粒度的语言信息。

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