通过无监督结构习得改进语言建模

K. Ries, F. D. Buø, Ye-Yi Wang
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引用次数: 17

摘要

通过一种新的无监督获取结构文本模型的方法,与先进的n-gram模型相比,语料库的困惑度通常降低了30%以上。该方法基于从上下文中对单词和短语进行分类的新算法和新的序列查找过程。这些程序旨在快速准确地处理小型和大型语料库。对它们进行迭代以构建语料库的结构模型。该结构模型可用于重新计算语音识别器的分数,提高单词的准确率。进一步的应用,如预处理神经网络和(隐)马尔可夫模型在语言处理,利用该模型的结构发现能力,提出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved language modelling by unsupervised acquisition of structure
The perplexity of corpora is typically reduced by more than 30% compared to advanced n-gram models by a new method for the unsupervised acquisition of structural text models. This method is based on new algorithms for the classification of words and phrases from context and on new sequence finding procedures. These procedures are designed to work fast and accurately on small and large corpora. They are iterated to build a structural model of a corpus. The structural model can be applied to recalculate the scores of a speech recogniser and improves the word accuracy. Further applications such as preprocessing for neural networks and (hidden) Markov models in language processing, which exploit the structure finding capabilities of this model, are proposed.
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