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Automatically acquiring part of speech correcting rules of multi-category words based on incomplete decision tables

机译:基于不完整决策表自动获取多类单词的言语纠正规则的一部分

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Part of speech (POS) tagging is a basic subject for Chinese information processing. In general, the existence of multi-category words greatly affects the processing quality of corpora. High efficient methods and automatically correcting techniques for multi-category word tagging are the keys for improving tagging precision. In this paper, for part of speech correcting of multi-category word, a modeling method is introduced based on an incomplete decision table and two algorithms for attribute reduction and object reduction used for automatically acquiring correcting rules are presented based on attribute significance. The results of testing show the validity of our method for improving part of speech tagging precision in large corpora engineering.
机译:词性(POS)标记是中文信息处理的基本主题。一般来说,多类别词的存在极大地影响了Corpora的加工质量。高效的方法和自动纠正多类别字标记的技术是提高标记精度的键。在本文中,对于多种类别字的言语校正,基于属性意义呈现了一种基于不完整的决定表来引入建模方法,并且基于属性意义来呈现用于自动获取校正规则的属性减少和对象减少的算法。测试结果表明了我们改进大型语料库工程中的一部分语音标记精度的方法的有效性。

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