Improved email spam classification method using integrated particle swarm optimization and decision tree

H. Kaur, Ajay Sharma
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引用次数: 10

Abstract

E-mails have become the best way to communicate formal documents over internet among users. But many people have started sending the unwanted mails to others, also called email spam. It is found that many techniques have been proposed so far to efficient mine the emails as spam or non-spammed. In existing techniques, the use of unsupervised filtering to filter the input data set is ignored by the most of the existing researchers. The use of hybridization of data mining techniques is ignored in instruct to improve the accuracy rate further for Detection of fraudulent emails. The majority of the existing techniques are limited to various significant features of emails therefore utilising more features may provide more significant results. To handle above stated limitations a new technique is proposed in this paper. The proposed technique has integrated particle swarm optimization based on Decision Tree algorithm with unsupervised filtering to enhance the accuracy rate further. The comparative analyses have clearly pointed to better results than the available techniques.
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基于粒子群优化和决策树的垃圾邮件分类方法的改进
电子邮件已经成为用户在互联网上交流正式文件的最佳方式。但许多人已经开始向他人发送不需要的邮件,也被称为垃圾邮件。研究发现,目前已经提出了许多有效挖掘垃圾邮件和非垃圾邮件的技术。在现有的技术中,使用无监督滤波对输入数据集进行过滤被大多数现有的研究人员所忽略。为了进一步提高欺诈性电子邮件检测的准确率,在指导中忽略了混合数据挖掘技术的使用。大多数现有技术仅限于电子邮件的各种重要特征,因此利用更多的特征可能会提供更重要的结果。为了克服上述局限性,本文提出了一种新的技术。该方法将基于决策树算法的粒子群优化与无监督滤波相结合,进一步提高了准确率。对比分析清楚地指出了比现有技术更好的结果。
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