计算机恶意软件预测中各种集成算法的比较分析

Yusuf Bayu Wicaksono, Christina Juliane
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引用次数: 0

摘要

到2022年,预计将有290亿台设备连接到互联网,因此网络犯罪将成为一个主要威胁。网络犯罪最常见的形式之一是感染旨在伤害最终用户的恶意软件(malware)。在软件公司中,微软的漏洞数量最多,其中微软操作系统(Windows)的漏洞数量最多,占68.85%。恶意软件感染研究主要是在恶意软件感染用户设备时进行的。这项研究使用了相反的方法,即在感染发生之前预测用户设备上恶意软件感染的可能性。类似的研究仍然使用单一算法,而本研究使用更能抵抗偏差-方差权衡的集成算法。本研究从影响微软Windows操作系统计算机设备上恶意软件感染可能性的计算机特征数据中,使用集成算法,如Bagging Classifier、Random Forest、Light Gradient Boosting Machine、Extreme Gradient Boosting Machine、Category Boosting和Stacking Classifier,构建模型。最好的模型是Stacking Classifier,它是Light Gradient Boosting Machine和Category Boosting Classifier的组合,训练和测试结果分别为0.70665和0.64694。还确定了重要的功能,作为采取策略保护用户设备免受恶意软件感染的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Various Ensemble Algorithms for Computer Malware Prediction
By 2022 it is estimated that 29 billion devices have been connected to the internet so that cybercrime will become a major threat. One of the most common forms of cybercrime is infection with malicious software (malware) designed to harm end users. Microsoft has the highest number of vulnerabilities among software companies, with the Microsoft operating system (Windows) contributing to the largest vulnerabilities at 68.85%. Malware infection research is mostly done when malware has infected a user's device. This study uses the opposite approach, which is to predict the potential for malware infection on the user's device before the infection occurs. Similar studies still use single algorithms, while this study uses ensemble algorithms that are more resistant to bias-variance trade-off.  This study builds models from data on computer features that affect the possibility of malware infection on computer devices with Microsoft Windows operating system using ensemble algoritms, such as Bagging Classifier, Random Forest, Light Gradient Boosting Machine, Extreme Gradient Boosting Machine, Category Boosting, and Stacking Classifier. The best model is Stacking Classifier, which is a combination of Light Gradient Boosting Machine and Category Boosting Classifier, with training and test results of 0.70665 and 0.64694. Important features have also been identified as a reference for taking policies to protect user devices from malware infections.
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