Email Categorization using Inherent Features and Fuzzy Theory
نویسندگان
چکیده
In this paper, we propose an email categorization method using fuzzy theory and inherent feature of messages set of email. The proposed method can automatically classify emails into category labels, which supports keyword search and directory search method to efficiently manage the classified result with relation to a large volume of emails. In addition, it can reorganize email category hierarchy regarding user’s viewpoint which enhances the efficiency of directory search for the recall rate.
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