汉语频繁串的性质及其进一步应用

Yih-Jeng Lin, Ming-Shing Yu
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引用次数: 6

摘要

本文揭示了CFSs的一些重要性质及其在汉语自然语言处理(NLP)中的应用。我们之前提出了一种从中文语料库中提取包含未知单词的中文频繁字符串的方法[Lin and Yu 2001]。我们发现CFSs包含许多4字串、3字串和更长的n-gram。这样的信息只能使用传统的语言模型(LM)从一个非常大的语料库中获得。与传统LM相比,我们可以利用CFSs解决汉语无声调音字转换问题,并在较小的训练语料库中纠正汉语拼写错误,从而达到较高的精度和效率。对汉语无音音字转换的正确率达到92.86%,对汉语拼写错误的正确率达到87.32%。我们还尝试为CFS分配语法类别。在外部测试中,使用最高水平的句法类别时,对句法类别分配的准确率为88.53%。
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The Properties and Further Applications of Chinese Frequent Strings
This paper reveals some important properties of CFSs and applications in Chinese natural language processing (NLP). We have previously proposed a method for extracting Chinese frequent strings that contain unknown words from a Chinese corpus [Lin and Yu 2001]. We found that CFSs contain many 4-character strings, 3-word strings, and longer n-grams. Such information can only be derived from an extremely large corpus using a traditional language model (LM). In contrast to using a traditional LM, we can achieve high precision and efficiency by using CFSs to solve Chinese toneless phoneme-to-character conversion and to correct Chinese spelling errors with a small training corpus. An accuracy rate of 92.86% was achieved for Chinese toneless phoneme-to-character conversion, and an accuracy rate of 87.32% was achieved for Chinese spelling error correction. We also attempted to assign syntactic categories to a CFS. The accuracy rate for assigning syntactic categories to the CFSs was 88.53% for outside testing when the syntactic categories of the highest level were used.
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