Scientific journal paper Q1
A spam filtering multi-objective optimization study covering parsimony maximization and three-way classification
Vitor Manuel Basto Fernandes (Basto-Fernandes, V.); Iryna Yevseyeva (Yevseyeva, I.); Jose R. Mendez (Méndez, J. R.); Jiaqi Zhao (Zhao, J.); Florentino Fdez-Riverola (Fdez-Riverola, F.); Michael T. M. Emmerichd (Emmerichd, M. T. M.);
Journal Title
Applied Soft Computing
Year (definitive publication)
2016
Language
English
Country
Netherlands
More Information
Web of Science®

Times Cited: 24

(Last checked: 2026-04-13 10:43)

View record in Web of Science®


: 0.4
Scopus

Times Cited: 26

(Last checked: 2026-04-08 14:52)

View record in Scopus


: 0.4
Google Scholar

Times Cited: 35

(Last checked: 2026-04-13 02:54)

View record in Google Scholar

This publication is not indexed in Overton

Abstract
Classifier performance optimization in machine learning can be stated as a multi-objective optimization problem. In this context, recent works have shown the utility of simple evolutionary multi-objective algorithms (NSGA-II, SPEA2) to conveniently optimize the global performance of different anti-spam filters. The present work extends existing contributions in the spam filtering domain by using three novel indicator-based (SMS-EMOA, CH-EMOA) and decomposition-based (MOEA/D) evolutionary multi objective algorithms. The proposed approaches are used to optimize the performance of a heterogeneous ensemble of classifiers into two different but complementary scenarios: parsimony maximization and e-mail classification under low confidence level. Experimental results using a publicly available standard corpus allowed us to identify interesting conclusions regarding both the utility of rule-based classification filters and the appropriateness of a three-way classification system in the spam filtering domain.
Acknowledgements
--
Keywords
Spam filtering,Multi-objective optimization,Parsimony,Three-way classification,Rule-based classifiers,SpamAssassin
  • Computer and Information Sciences - Natural Sciences
Funding Records
Funding Reference Funding Entity
14VI05 University of Vigo