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Multiclass composite N-gram language model based on connection direction

机译:基于连接方向的多类复合N-gram语言模型

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摘要

The authors propose a method to generate a compact, highly reliable language model for speech recognition based on the efficient classification of words. In this method, the connectedness with the words immediately before and after the word is taken to represent separate attributes, and individual classification is performed for each word. The resulting composite word class is created separately based on the distribution of words connected before or after. As a result, classification of classes is efficient and reliable. In a multiclass composite N-gram, which uses the proposed method for the variable-order N-gram to bring in chain words, the entry size is reduced to one-tenth, and the word recognition rate is higher than that of a conventional composite N-gram for particles or variable-length word arrays.
机译:作者提出了一种基于单词的有效分类来生成用于语音识别的紧凑,高度可靠的语言模型的方法。在这种方法中,紧接单词前后的单词之间的联系被认为代表了单独的属性,并对每个单词进行了单独的分类。根据之前或之后连接的单词的分布分别创建生成的复合单词类。结果,类的分类是有效和可靠的。在多类复合N-gram中,使用所提出的可变阶N-gram方法引入链词,其输入大小减小到十分之一,并且词的识别率高于常规复合词粒子或变长单词数组的N元语法。

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