Feature Selection Using Hybrid Metaheuristic Algorithm for Email Spam Detection

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Journal Title

Cybernetics and Information Technologies

Journal ISSN

1311-9702

Volume Title

24

Issue

2

Pages

156-171

Publisher

Walter de Gruyter GmbH

Language

en

DOI

10.2478/cait-2024-0021

Abstract

Abstract In the present study, Krill Herd (KH) is proposed as a Feature Selection tool to detect spam email problems. This works by assessing the accuracy and performance of classifiers and minimizing the number of features. Krill Herd is a relatively new technique based on the herding behavior of small crustaceans called krill. This technique has been combined with a local search algorithm called Tabu Search (TS) and has been successfully employed to identify spam emails. This method has also generated much better results than other hybrid algorithm optimization systems such as the hybrid Water Cycle Algorithm with Simulated Annealing (WCASA). To assess the effectiveness of KH algorithms, SVM classifiers, and seven benchmark email datasets were used. The findings indicate that KHTS is much more accurate in detecting spam mail (97.8%) than WCASA.

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Cited by: 3 (Scopus)

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Open Access

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References

Abualigah, L. M., A. T. Khader, M. A. Al-Betar. Unsupervised Feature Selection Technique Based on Genetic Algorithm for Improving the Text Clustering. – In: Proc. of 7th International IEEE Conference on Computer Science and Information Technology (CSIT’16), 2016.

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Except where otherwised noted, this item's license is described as Open Access