聚类技术在语言建模中的应用——以亚洲语言为例

Jianfeng Gao, Joshua Goodman, J. Miao
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引用次数: 47

摘要

基于聚类的n-图建模是普通基于词的n-图建模的一种变体。它试图利用词语之间的相似性。本文对聚类技术在亚洲语言建模中的应用进行了实证研究。聚类用于提高语言模型的性能(即复杂度)和压缩语言模型。本文在日语报纸语料库和汉语异质语料库上对基于聚类的三词表模型进行了实验测试。以前关于词聚类的大部分研究都集中在如何获得最好的聚类上,而我们的研究集中在使用聚类的最佳方式上。实验结果表明,我们提出的一些新技术比以前的方法效果好得多,在相同的困惑水平上实现了40%以上的尺寸缩减。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of Clustering Techniques for Language Modeling-Application to Asian Language
Cluster-based n-gram modeling is a variant of normal word-based n-gram modeling. It attempts to make use of the similarities between words. In this paper, we present an empirical study of clustering techniques for Asian language modeling. Clustering is used to improve the performance (i.e. perplexity) of language models as well as to compress language models. Experimental tests are presented for cluster-based trigram models on a Japanese newspaper corpus and on a Chinese heterogeneous corpus. While the majority of previous research on word clustering has focused on how to get the best clusters, we have concentrated our research on the best way to use the clusters. Experimental results show that some novel techniques we present work much better than previous methods, and achieve more than 40% size reduction at the same level of perplexity.
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