Comparative analysis of classifiers for header based emails classification using supervised learning
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چکیده
---------------------------------------------------------------------***--------------------------------------------------------------------Abstract Emails are used as primary communication tool in business. They are preferred as fast means of communication. In the business domain, they facilitate information-gathering and communication function. The volume of emails receiving into an inbox varies from tens for regular users to tens of thousands for an enterprise.
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تاریخ انتشار 2016