一种可解释的可信赖的垃圾邮件检测人工智能方法

A. Ibrahim, M. Mejri, Fehmi Jaafar
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引用次数: 0

摘要

几十年来,垃圾邮件一直是最严重、最令人恼火的网络安全威胁之一。为了检测垃圾邮件,使用了各种机器学习(ML)和深度学习(DL)方法。这些方法可以识别收件箱中的垃圾邮件,并将其发送到垃圾文件夹。然而,这些方法有一些局限性,例如它们无法解释为什么电子邮件被认为是垃圾邮件。本文引入X_SPAM方法,结合机器学习技术(Random Forest)和深度学习技术(LSTM)来检测垃圾邮件,并使用可解释的人工智能技术(LIME)来解释垃圾邮件分类的原因,从而提高垃圾邮件检测的可信度。我们使用两个不同的数据集(不带元数据的LING和带元数据的Enron)来评估所提出的方法。我们发现,该方法对RF和LSTM的准确率分别达到了98.13%和99.13%。此外,该研究还展示了一种可视化的方式来消除ML和DL分类器的黑箱缺陷,以提高方法的可信度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Explainable Artificial Intelligence Approach for a Trustworthy Spam Detection
For decades, spam emails have been one of the most serious and irritating cybersecurity threats. For detecting spam emails, a variety of machine learning (ML) and deep learning (DL) approaches are used. These approaches identify spam emails in the inbox and send them to a junk folder. However, these approaches have some limitations, such as their inability to explain why an email is considered spam. The current paper introduces the X_SPAM approach by combining the machine learning technique (Random Forest) and deep learning technique (LSTM) to detect spam and uses the Explainable Artificial Intelligence technique (LIME) to increase the trustworthiness of spam detection by explaining the reason for their classification. We evaluate the proposed approach using two different datasets (LING without metadata and Enron with metadata). We found that the proposed approach has achieved a high accuracy rate for RF and LSTM at 98.13% and 99.13% respectively. Moreover, the study exhibits a visualizing manner to eliminate the black box drawback for ML and DL classifiers to increase the approach's trustworthiness.
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