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Detecting unwanted email using VAT

Version 2 2024-06-04, 11:26
Version 1 2011-01-01, 00:00
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posted on 2024-06-04, 11:26 authored by M Islam, Morshed Chowdhury
Spam or unwanted email is one of the potential issues of Internet security and classifying user emails correctly from penetration of spam is an important research issue for anti-spam researchers. In this paper we present an effective and efficient spam classification technique using clustering approach to categorize the features. In our clustering technique we use VAT (Visual Assessment and clustering Tendency) approach into our training model to categorize the extracted features and then pass the information into classification engine. We have used WEKA (www.cs.waikato.ac.nz/ml/weka/) interface to classify the data using different classification algorithms, including tree-based classifiers, nearest neighbor algorithms, statistical algorithms and AdaBoosts. Our empirical performance shows that we can achieve detection rate over 97%.

History

Language

eng

Publication classification

B1 Book chapter

Copyright notice

2011, Springer-Verlag Berlin Heidelberg

Extent

14

Editor/Contributor(s)

Lee R

Chapter number

10

Pagination

113-126

ISSN

1860-949X

ISBN-13

9783642222887

ISBN-10

3642222889

Publisher

Springer

Place of publication

Berlin, Germany

Title of book

Software engineering, artificial intelligence, networking and parallel/distributed computing 2011

Series

Studies in computational intelligence ; v. 368

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