利用可解释的人工智能对强大的恶意软件检测进行全面调查

E. Baghirov
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引用次数: 0

摘要

在当今的数字世界中,恶意软件通过窃取敏感数据和破坏计算机系统,对安全和隐私构成严重威胁。传统的基于签名的检测方法已经变得低效和耗时。然而,数据驱动的人工智能技术,特别是机器学习(ML)和深度学习(DL),已显示出通过分析行为特征来检测恶意软件的有效性。尽管这些模型的性能前景广阔,但其黑箱性质要求提高可解释性,以促进其在现实世界中的应用。这会使网络安全专家评估模型可靠性的能力复杂化。在这项工作中,采用了可解释人工智能(XAI)来理解和评估机器学习模型在检测安卓设备上的恶意软件时所做出的决策。为了评估恶意软件的检测情况,我们使用 CICMalDroid 数据集进行了实验,应用了逻辑回归等 ML 模型和几种树算法。总体 F1 分数达到 94%,并为模型决策提供了可解释的解释,突出了有助于准确分类的更多关键特征。研究发现,采用 XAI 技术可以为恶意软件分析研究人员提供有价值的见解,增强他们对 ML 模型操作的理解,而不是仅仅关注提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive investigation into robust malware detection with explainable AI

In today’s digital world, malware poses a serious threat to security and privacy by stealing sensitive data and disrupting computer systems. Traditional signature-based detection methods have become inefficient and time-consuming. However, data-driven AI techniques, particularly machine learning (ML) and deep learning (DL), have shown effectiveness in detecting malware by analyzing behavioral characteristics. Despite their promising performance, the black-box nature of these models requires improved explainability to facilitate their adoption in real-world applications. This can complicate the ability of cybersecurity experts to evaluate the model’s reliability. In this work, Explainable Artificial Intelligence (XAI) is employed to comprehend and evaluate the decisions made by machine learning models in the detection of malware on Android devices. To evaluate malware detection, experiments were conducted using CICMalDroid dataset by applying ML models like Logistic Regression and several tree algorithms. An overall 94% F1-score was achieved, and interpretable explanations for model decisions were provided, highlighting more critical features that contributed to accurate classifications. It was found that employing XAI techniques can provide valuable insights for malware analysis researchers, enhancing their understanding of the operations of the ML model, rather than solely focusing on improving accuracy.

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