A Trainable Fuzzy Spam Detection System

نویسندگان

  • M. Muztaba Fuad
  • Debzani Deb
  • M. Shahriar Hossain
چکیده

Electronic mail (e-mail) has been considered as one of the most convenient way to communicate among the users in the Internet. The rapid growth of users in the Internet and the abuse of e-mail by unsolicited users cause an exponential increase of e-mails in user mailboxes. Although there are several systems which use different AI techniques to filter out spam, there is hardly any system developed so far to filter e-mails using the fuzzy logic system. This paper presents the design and implementation of a trainable fuzzy logic based e-mail classification system that learns the most effective fuzzy rules during the training phase and then applies the fuzzy control model to classify unseen messages. Our findings imply that automatically trainable fuzzy spam filters are practically viable and can have a significant effect on spam detection.

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تاریخ انتشار 2004