Title of article :
Boosting Accuracy of Classical Machine Learning Antispam Classifiers in Real Scenarios by Applying Rough Set Theory
Author/Authors :
Pérez-Díaz,N. Higher Technical School of Computer Engineering - University of Vigo - Polytechnic Building - Campus Universitario As Lagoas s/n, Spain , Ruano-Ordás, D. Higher Technical School of Computer Engineering - University of Vigo - Polytechnic Building - Campus Universitario As Lagoas s/n, Spain , Fdez-Riverola, F. Higher Technical School of Computer Engineering - University of Vigo - Polytechnic Building - Campus Universitario As Lagoas s/n, Spain , Méndez, J. R. Higher Technical School of Computer Engineering - University of Vigo - Polytechnic Building - Campus Universitario As Lagoas s/n, Spain
Pages :
11
From page :
1
To page :
11
Abstract :
Nowadays, spam deliveries represent a major problem to benefit from the wide range of Internet-based communication forms. Despite the existence of different well-known intelligent techniques for fighting spam, only some specific implementations of Naïve Bayes algorithm are finally used in real environments for performance reasons. As long as some of these algorithms suffer from a large number of false positive errors, in this work we propose a rough set postprocessing approach able to significantly improve their accuracy. In order to demonstrate the advantages of the proposed method, we carried out a straightforward study based on a publicly available standard corpus (SpamAssassin), which compares the performance of previously successful well-known antispam classifiers (i.e., Support Vector Machines, AdaBoost, Flexible Bayes, and Naïve Bayes) with and without the application of our developed technique. Results clearly evidence the suitability of our rough set postprocessing approach for increasing the accuracy of previous successful antispam classifiers when working in real scenarios.
Keywords :
Rough Set Theory , Learning Antispam Classifiers , Real Scenarios , Classical Machine
Journal title :
Scientific Programming
Serial Year :
2016
Full Text URL :
Record number :
2607430
Link To Document :
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