Analysis of Machine learning Techniques Used in Behavior-Based Malware Detection

Ivan Firdausi, Charles Lim, Alva Erwin, A. Nugroho
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引用次数: 265

Abstract

The increase of malware that are exploiting the Internet daily has become a serious threat. The manual heuristic inspection of malware analysis is no longer considered effective and efficient compared against the high spreading rate of malware. Hence, automated behavior-based malware detection using machine learning techniques is considered a profound solution. The behavior of each malware on an emulated (sandbox) environment will be automatically analyzed and will generate behavior reports. These reports will be preprocessed into sparse vector models for further machine learning (classification). The classifiers used in this research are k-Nearest Neighbors (kNN), Naïve Bayes, J48 Decision Tree, Support Vector Machine (SVM), and Multilayer Perceptron Neural Network (MlP). Based on the analysis of the tests and experimental results of all the 5 classifiers, the overall best performance was achieved by J48 decision tree with a recall of 95.9%, a false positive rate of 2.4%, a precision of 97.3%, and an accuracy of 96.8%. In summary, it can be concluded that a proof-of-concept based on automatic behavior-based malware analysis and the use of machine learning techniques could detect malware quite effectively and efficiently.
基于行为的恶意软件检测中使用的机器学习技术分析
利用互联网的恶意软件每天都在增加,已经成为严重的威胁。与恶意软件的高传播率相比,人工启发式检测的恶意软件分析不再被认为是有效和高效的。因此,使用机器学习技术的基于行为的恶意软件自动检测被认为是一种深刻的解决方案。每个恶意软件在模拟(沙箱)环境中的行为将被自动分析并生成行为报告。这些报告将被预处理成稀疏向量模型,用于进一步的机器学习(分类)。本研究中使用的分类器有k近邻(kNN)、Naïve贝叶斯、J48决策树、支持向量机(SVM)和多层感知器神经网络(MlP)。综合5种分类器的测试和实验结果分析,J48决策树的总体性能最好,召回率为95.9%,假阳性率为2.4%,准确率为97.3%,准确率为96.8%。综上所述,可以得出结论,基于自动行为的恶意软件分析和使用机器学习技术的概念验证可以非常有效地检测恶意软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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