Other language title :
روش طبقه بندي براي هرزنامه هاي الكترونيكي با الگوريتم تركيبي براي انتخاب ويژگي بهينه
Title of article :
A Classification Method for E-mail Spam Using a Hybrid Approach for Feature Selection Optimization
Author/Authors :
Hassani, Z. Department of Computer Science - Faculty of Sciences - Kosar University of Bojnord, Iran , Hajihashemi, V. Faculty of Enginering - Kharazmi University, Tehran, Iran , Borna, K. Faculty of Mathematics and Computer Science - Kharazmi University, Tehran, Iran , Sahraei Dehmajnoonie, I. Islamic Azad University Science and Research Branch, Kerman, Iran
Abstract :
Spam is an unwanted email that is harmful to communications around the world.
Spam leads to a growing problem in a personal email, so it would be essential to detect
it. Machine learning is very useful to solve this problem as it shows good results in
order to learn all the requisite patterns for classification due to its adaptive existence.
Nonetheless, in spam detection, there are a large number of features to attend as they
play an essential role in detection efficiency. In this article, we're working on a feature
selection method to e-mail spam. This approach is considered a hybrid of optimization
algorithms and classifiers in machine learning. Binary Whale Optimization (BWO) and
Binary Grey Wolf Optimization (BGWO) algorithms are used for feature selection and
K-Nearest Neighbor (KNN) and Fuzzy K-Nearest Neighbor (FKNN) algorithms are
applied as the classifiers in this research. The proposed method is tested on the
"SPAMBASE" datasets from UCI Machine learning Repesotries and the experimental
results revealed the highest accuracy of 97.61% on this dataset. The obtained results
indicateed that the proposed method is suitable and capable to provide excellent
performance in comparison with other methods.
Keywords :
Spam Mails , Whale Optimization Algorithm , Grey Wolf Optimization Algorithm , Fuzzy KNearest Neighbor algorithm (FKNN) , Feature Selection
Journal title :
Journal of Sciences Islamic Republic of Iran