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A survey of cross-domain text categorization techniques

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4 Author(s)

Text Mining is important, emerging, research area, because plenty of text resources growing rapidly through the internet and digital world. In the text data analysis text categorization is one of the vital techniques. Traditional text categorization methods are not able to handle well with learning across different domains. Cross-domain classification is more challenging problem than single domain classification problem. In this paper survey of cross-domain text categorization techniques have been presented.

Published in:
Recent Advances in Information Technology (RAIT), 2012 1st International Conference on

Date of Conference: 15-17 March 2012

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