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Machine learning approaches for modeling spammer behavior

Version 2 2024-06-04, 04:45
Version 1 2014-10-28, 09:16
chapter
posted on 2024-06-04, 04:45 authored by M Islam, A Mahmud
Spam is commonly known as unsolicited or unwanted email messages in the Internet causing potential threat to Internet Security. Users spend a valuable amount of time deleting spam emails. More importantly, ever increasing spam emails occupy server storage space and consume network bandwidth. Keyword-based spam email filtering strategies will eventually be less successful to model spammer behavior as the spammer constantly changes their tricks to circumvent these filters. The evasive tactics that the spammer uses are patterns and these patterns can be modeled to combat spam. This paper investigates the possibilities of modeling spammer behavioral patterns by well-known classification algorithms such as Naïve Bayesian classifier (Naive Bayes), Decision Tree Induction (DTI) and Support Vector Machines (SVMs). Preliminary experimental results demonstrate a promising detection rate of around 92%, which is considerably an enhancement of performance compared to similar spammer behavior modeling research.

History

Chapter number

24

Pagination

251-260

ISSN

0302-9743

ISBN-13

9783642171864

ISBN-10

3642171869

Language

eng

Publication classification

B1 Book chapter

Copyright notice

2010, Springer

Extent

57

Editor/Contributor(s)

Cheng PJ, Kan MY, Lam W, Nakov P

Publisher

Springer-Verlag

Place of publication

Berlin, Germany

Title of book

Information retrieval technology : 6th Asia Information Retrieval Symposium, AIRS 2010, Taipei, Taiwan, December 1-3, 2010 : proceedings

Series

Lecture Notes in Computer Science; v.6458

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