基于混合机器学习的恶意软件可执行文件分类分析研究

Fauzan Hikmah Ramadhan, V. Suryani, Satria Mandala
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引用次数: 0

摘要

恶意软件是一种执行破坏性功能的恶意程序,其目的是破坏计算机系统中的资源,获取一定的经济利益,窃取数据的隐私和机密性,并利用计算资源使计算机系统中的服务不可用。防止恶意软件攻击的方法之一是使用机器学习检测可移植可执行(PE)恶意软件文件。然而,并不是所有的机器学习算法在检测恶意PE文件时都具有最佳性能,因为有些算法存在一些弱点,导致检测恶意PE文件的性能较低。然而,这些缺点可以通过将两种或两种以上不同的单独算法组合成一种混合机器学习算法来减少,因此一些单独算法的优点可以覆盖其他单独算法的缺点。因此,本研究提出对混合机器学习算法在恶意PE文件检测中的性能进行研究。混合机器学习算法使用投票分类器方法和LightGBM、XGBoost和Logistic回归作为其基本模型。本研究证明混合机器学习算法比集成算法LightGBM产生更高的召回值。混合机器学习算法的召回值最高,召回值为99.5026%,而LightGBM算法的召回值仅为99.4480%。此外,XGBoost算法的另一个基本模型的召回值为99.5004%,Logistic回归算法的召回值为98.0539%。
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Analysis Study of Malware Classification Portable Executable Using Hybrid Machine Learning
Malware is a malicious program that executes destructive functions to destroy the resources in a computer system, gain some financial benefits, steal the privacy and confidentiality of data, and use computing resources to make a service unavailable in a computer system. One of the ways to prevent malware attacks is by detecting Portable Executable (PE) malware files using machine learning. However, not all machine learning algorithms have optimal performance in detecting a malware PE File because some have several weaknesses that result in low performance in detecting a malware PE File. However, these shortcomings can be reduced by combining two or more two different individual algorithms into one hybrid machine learning algorithm, so the advantages of some individual algorithms can cover the shortcomings of other individual algorithms. Therefore, this research proposes research on the performance of the hybrid machine learning algorithms in detecting malware PE File. The hybrid machine learning algorithms use the voting classifier method and LightGBM, XGBoost, and Logistic Regression as their base model. This research proves that the hybrid machine learning algorithm produces a higher recall value than the ensemble algorithm LightGBM. The hybrid machine learning algorithm produces the highest recall value with a recall value of 99.5026%, while the LightGBM algorithm only produces a recall value of 99.4480%. Furthermore, the recall value of another base model is 99.5004% for the XGBoost algorithm and 98.0539% for the Logistic Regression algorithm.
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