Hierarchical E-mail Spam Filtering Using Ai & Data Mining Techniques: Decision Tree, Support Vector Machine, Multilayer Perception, Naïve Bays, Bayesian Network, and Random Forests - Ismail M. Khater - Bücher - LAP LAMBERT Academic Publishing - 9783847314134 - 21. Februar 2012
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Hierarchical E-mail Spam Filtering Using Ai & Data Mining Techniques: Decision Tree, Support Vector Machine, Multilayer Perception, Naïve Bays, Bayesian Network, and Random Forests

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Email spam continues to be a major problem in the Internet. With the spread of malware combined with the power of botnets, spammers are now able to launch large scale spam campaigns covering wide range of topics causing major traffic increase and leading to enormous economical loss. There have been great research efforts to combat email spam. However, a major problem in most email spam filters is that they may result in filtering some legitimate emails. Such a problem could be prohibitively expensive in practice especially if the misclassified email is of a great importance to the recipient. For this reason, it is important to build an email spam filter that is capable of efficiently filtering spam while minimizing collateral damage. Since header-based and content-based email spam filtering are the two main approaches for email spam filtering, we propose to combine both approaches (i.e., header-based and content-based) in such a way that achieve the best of both worlds. That is to build fast, efficient and highly accurate email spam classifier. In particular, we propose a Hierarchical E-mail Spam Filtering (HESF) system that is composed of two main phases.

Medien Bücher     Taschenbuch   (Buch mit Softcover und geklebtem Rücken)
Erscheinungsdatum 21. Februar 2012
ISBN13 9783847314134
Verlag LAP LAMBERT Academic Publishing
Seitenanzahl 136
Maße 150 × 7 × 225 mm   ·   221 g
Sprache Deutsch