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Detection of Spam Email by Combining Harmony Search Algorithm and Decision Tree

机译:和谐搜索算法与决策树相结合的垃圾邮件检测

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Spam emails is probable the main problem faced by most e-mail users. There are many features in spam email detection and some of these features have little effect on detection and cause skew detection and classification of spam email. Thus, Feature Selection (FS) is one of the key topics in spam email detection systems. With choosing the important and effective features in classification, its performance can be optimized. Selector features has the task of finding a subset of features to improve the accuracy of its predictions. In this paper, a hybrid of Harmony Search Algorithm (HSA) and decision tree is used for selecting the best features and classification. The obtained results on Spam-base dataset show that the rate of recognition accuracy in the proposed model is 95.25% which is high in comparison with models such as SVM, NB, J48 and MLP. Also, the accuracy of the proposed model on the datasets of Ling-spam and PU1 is high in comparison with models such as NB, SVM and LR.
机译:垃圾邮件可能是大多数电子邮件用户面临的主要问题。垃圾邮件检测中有很多功能,其中一些功能对检测的影响很小,并导致检测错误和垃圾邮件分类。因此,功能选择(FS)是垃圾邮件检测系统中的关键主题之一。通过选择分类中重要而有效的特征,可以优化其性能。选择器特征的任务是查找特征子集以提高其预测的准确性。在本文中,将和谐搜索算法(HSA)和决策树混合使用以选择最佳特征和分类。在基于垃圾邮件的数据集上获得的结果表明,所提出的模型的识别准确率为95.25%,与SVM,NB,J48和MLP等模型相比,具有很高的识别率。而且,与诸如NB,SVM和LR之类的模型相比,该模型在Ling-spam和PU1数据集上的准确性较高。

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