Approach In Automatic Detection And Correction Of Errors In Chinese Text Based On Feature And Learning

PROCEEDINGS OF THE 3RD WORLD CONGRESS ON INTELLIGENT CONTROL AND AUTOMATION, VOLS 1-5(2000)

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摘要
Language models adopted by most existing error detection and correction approaches of Chinese text are N-Gram models of character, word or POS tag. Their deficiencies are that only local language constraint is employed and there is no language model unification process. A feature-based automatic error detection and correction approach is presented. It uses both local language features and wide-scope semantic features. Winnow is adopted in the learning step. In experiment, this method achieves error detection recall rate of 85% precise rate of 41% and error correction rate of 51%. It shows better performance than existing approaches based on N-Gram models.
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关键词
automatic error detection and correction of Chinese text, natural language processing, spelling check
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