基于导向鲸优化算法的投票集合恶意软件检测与分类

M. Eid, M. I. F. Allah
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引用次数: 0

摘要

恶意软件是一种旨在破坏计算机系统的软件。定位恶意软件是网络安全行业的一项关键任务。恶意软件作者和安全专家陷入了一场永无止境的冲突。现代恶意软件经常表现出多态行为和广泛的特征,为了对抗它,必须创建新的对策。在这里,我们提出了一种用于恶意软件检测和分类的混合学习方法。在这种情况下,我们合并了随机森林和k近邻分类器的机器学习技术来开发混合学习模型。我们使用当前的恶意软件和更新的数据集,其中包含10,000个恶意和良性文件示例,有78个特征值和6个不同的恶意软件类别需要处理。在对模型进行二分类和多分类训练后,我们将模型的结果与现有方法的结果进行了比较。所建议的方法可用于创建能够在新收集的数据上检测恶意软件的反恶意软件应用程序。
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Detection and Classification of Malware Using Guided Whale Optimization Algorithm for Voting Ensemble
Malware is software that is designed to cause damage to computer systems. Locating malicious software is a crucial task in the cybersecurity industry. Malware authors and security experts are locked in a never-ending conflict. In order to combat modern malware, which often exhibits polymorphic behavior and a wide range of characteristics, novel countermeasures have had to be created. Here, we present a hybrid learning approach to malware detection and classification. In this scenario, we have merged the machine learning techniques of Random Forest and K-Nearest Neighbor Classifier to develop a hybrid learning model. We used current malware and an updated dataset of 10,000 examples of malicious and benign files, with 78 feature values and 6 different malware classes to deal with. We compared the model's results with those of current approaches after training it for both binary and multi-class classification. The suggested methodology may be utilized to create an anti-malware application that is capable of detecting malware on newly collected data.
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