Improvement of non-negative matrix factorization based language model using exponential models

M. Novak, R. Mammone
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引用次数: 7

Abstract

This paper describes the use of exponential models to improve non-negative matrix factorization (NMF) based topic language models for automatic speech recognition. This modeling technique borrows the basic idea from latent semantic analysis (LSA), which is typically used in information retrieval. An improvement was achieved when exponential models were used to estimate the a posteriori topic probabilities for an observed history. This method improved the perplexity of the NMF model, resulting in a 24% perplexity improvement overall when compared to a trigram language model.
基于指数模型的非负矩阵分解语言模型的改进
本文描述了使用指数模型来改进基于非负矩阵分解(NMF)的主题语言模型,用于自动语音识别。这种建模技术借鉴了潜在语义分析(LSA)的基本思想,这种方法通常用于信息检索。当使用指数模型来估计观察历史的后验主题概率时,取得了改进。该方法改善了NMF模型的困惑度,与三元语言模型相比,总体上困惑度提高了24%。
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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