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Developing a Content-Based Spam Detection Method

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dc.contributor.author Ahmad Abdoh, Mousa Abdul Fattah
dc.contributor.author Supervisor - Mohammad Al Hafiz Mustafa
dc.date.accessioned 2014-11-12T12:22:28Z
dc.date.available 2014-11-12T12:22:28Z
dc.date.issued 2008-09
dc.identifier.citation Ahmad Abdoh, Mousa Abdul Fattah. Developing a Content-Based Spam Detection Method/ Mousa Abdul Fattah Ahmad Abdoh؛ Mohammad Al Hafiz Mustafa.-Khartoum : sudan university of science and technology,computer science,2008.-79p:ill;28cm.M.Sc. en_US
dc.identifier.uri http://repository.sustech.edu/handle/123456789/8001
dc.description Thesis en_US
dc.description.abstract The dramatically increasing number of email users, and the increasing number of free email providers, like yahoo, hotmail, gmail, increase the number of unwanted emails which is known as 'Spam emails'. The huge number of spam emails received daily by users account, made the necessity of existence of some sort of automated spam filters to detect and remove these unwanted emails. Several researchers have started working on automated techniques and tools that can be used to classify emails automatically into wanted) legitimate) or unwanted (spam) emails. Most of these filters are based on naïve Bayesian method. This thesis introduces a new automated filter based on naïve Bayesian. The basic idea of this filter is to give each word appears in emails a probabilistic value, this value indicates its probable belonging to spam. As there are many common words appear in spam as well as legitimate messages with the same rate, the proposed filter has a preprocessing component which removes all common words. The researcher carefully collected these common words. In the training phase a set of 1300 emails (legitimate and Spam) has been used. In this phase the weight of every uncommon word is estimated as the probability of a given word in spam email divided by the probability of the same word in legitimate email. In classification, a Bayesian classifier uses the weight table generated in the training phase to classify a given email as spam or legitimate. The proposed filter has been tested on a dataset of 400 emails, 200 of them are Spam and 200 of them are legitimate, the proposed algorithm succeeded in detecting 90% of the spam messages. en_US
dc.description.sponsorship Sudan University of Science and Technology en_US
dc.language.iso en_US en_US
dc.publisher Sudan University of Science and Technology en_US
dc.subject Spam Detection en_US
dc.subject Spam en_US
dc.subject Content-Based en_US
dc.subject unwanted emails en_US
dc.subject Spam emails en_US
dc.subject legitimate en_US
dc.title Developing a Content-Based Spam Detection Method en_US
dc.title.alternative تطوير طريقة للتعرف على الرسائل الإلكترونية غير المرغوب فيها بواسطة المحتوى en_US
dc.type Thesis en_US


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