首页> 外文期刊>International Journal of Information Technology & Decision Making >EMAIL SPAM DETECTION: A SYMBIOTIC FEATURE SELECTION APPROACH FOSTERED BY EVOLUTIONARY COMPUTATION
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EMAIL SPAM DETECTION: A SYMBIOTIC FEATURE SELECTION APPROACH FOSTERED BY EVOLUTIONARY COMPUTATION

机译:电子邮件垃圾邮件检测:通过进化计算建立的符号特征选择方法

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摘要

The electronic mail (email) is nowadays an essential communication service being widely used by most Internet users. One of the main problems affecting this service is the proliferation of unsolicited messages (usually denoted by spam) which, despite the efforts made by the research community, still remains as an inherent problem affecting this Internet service. In this perspective, this work proposes and explores the concept of a novel symbiotic feature selection approach allowing the exchange of relevant features among distinct collaborating users, in order to improve the behavior of anti-spam filters. For such purpose, several Evolutionary Algorithms (EA) are explored as optimization engines able to enhance feature selection strategies within the anti-spam area. The proposed mechanisms are tested using a realistic incremental retraining evaluation procedure and resorting to a novel corpus based on the well-known Enron datasets mixed with recent spam data. The obtained results show that the proposed symbiotic approach is competitive also having the advantage of preserving end-users privacy.
机译:如今,电子邮件(电子邮件)已成为大多数Internet用户广泛使用的基本通信服务。影响此服务的主要问题之一是未经请求的邮件(通常以垃圾邮件表示)的扩散,尽管研究界做出了努力,但仍是影响此Internet服务的固有问题。从这个角度出发,这项工作提出并探索了一种新颖的共生特征选择方法的概念,该方法允许在不同的协作用户之间交换相关特征,以改善反垃圾邮件过滤器的行为。为此,探索了几种进化算法(EA)作为能够增强反垃圾邮件区域内功能选择策略的优化引擎。使用现实的增量再培训评估程序并基于著名的Enron数据集和最近的垃圾邮件数据混合,采用新颖的语料库对提出的机制进行了测试。获得的结果表明,所提出的共生方法具有竞争优势,并且还具有保护最终用户隐私的优势。

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