Antlion optimization and boosting classifier for spam email detection

Amany A. Naem , Neveen I. Ghali , Afaf A. Saleh
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引用次数: 20

Abstract

Spam emails are not necessary, though they are harmful as they include viruses and spyware, so there is an emerging need for detecting spam emails. Several methods for detecting spam emails were suggested based on the methods of machine learning, which were submitted to reduce non-relevant emails and get results of high precision for spam email classification. In this work, a new predictive method is submitted based on antlion optimization (ALO) and boosting termed as ALO-Boosting for solving spam emails problem. ALO is a computational model imitates the preying technicality of antlions to ants in the life cycle. Where ALO was utilized to modify the actual place of the population in the separate seeking area, thus obtaining the optimum feature subset for the better classification submit based on boosting classifier. Boosting classifier is a classification algorithm that points to a group of algorithms which modifies soft learners into powerful learners. The proposed procedure is compared against support vector machine (SVM), k-nearest neighbours algorithm (KNN), and bootstrap aggregating (Bagging) on spam email datasets in a set of implementation measures. The experimental outcomes show the ability of the proposed method to successfully detect optimum features with the smallest value of selected features and a high precision of measures for spam email classification based on boosting classifier.

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垃圾邮件检测的Antlion优化和增强分类器
垃圾邮件是不必要的,虽然它们是有害的,因为它们包括病毒和间谍软件,所以有一个新兴的需要来检测垃圾邮件。提出了几种基于机器学习方法的垃圾邮件检测方法,提出了减少不相关邮件的方法,得到了垃圾邮件分类精度较高的结果。本文提出了一种基于蚁群优化(ALO)和boosting的垃圾邮件预测方法,称为ALO- boosting。ALO是一种模拟蚂蚁生命周期中蚂蚁捕食技术的计算模型。其中,利用ALO修改种群在单独搜索区域的实际位置,从而获得最优特征子集,以便基于增强分类器提交更好的分类。增强分类器是一组将软学习器改造成强大学习器的分类算法。将该方法与支持向量机(SVM)、k近邻算法(KNN)和自举聚合(Bagging)在垃圾邮件数据集上的实现方法进行了比较。实验结果表明,基于增强分类器的垃圾邮件分类方法能够以最小的特征值和较高的度量精度成功地检测出最优特征。
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