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Language Model for Chinese Character Recognition with Dense Errors

机译:具有密集错误的汉字识别语言模型

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摘要

In this paper we present a new language model that intends to raise recognition rate when there are dense errors in sentences. Based on language models brought forward previously such as 5-gram combined model and variable length language model, this language model make use of the candidates of errors and short-term information. Previous language models including 5-gram combined language model can effectively correct errors when they distribute evenly, but this model plans to correct dense errors also. In the end, we make experiments and get encouraging result.
机译:在本文中,我们提出了一种新的语言模型,旨在在句子中存在密集错误时提高识别率。基于先前提出的语言模型(例如5克组合模型和可变长度语言模型),该语言模型利用了错误和短期信息的候选对象。以前的语言模型(包括5克组合语言模型)可以在均匀分布时有效地纠正错误,但该模型还计划纠正密集错误。最后,我们进行实验并获得令人鼓舞的结果。

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