Review of Chinese Short Text Classification

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Abstract:

Because features of Chinese short text are different from long text, current text classification technology of long text classification are not suit of short text classification. This paper summarizes features, various methods and Application for Chinese short text classification, and pointes out their advantages, disadvantages and applicability scope. Establishing Open data set and unified framework standard are two main Problems and further research directions.

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2171-2174

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July 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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