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Feature Reduction and Optimization of Malware Detection System Using Ant Colony Optimization and Rough Sets

机译:使用蚁群优化和粗糙集的恶意软件检测系统的特征减少和优化

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摘要

Malware is a malicious program that can cause a security breach of a system. Malware detection and classification is one of the burning topics of research in information security. Executable files are the major source of input for static malware detection. Machine learning techniques are very efficient in behavioral-based malware detection and need a dataset of malware with different features. In windows, malware can be detected by analyzing the portable executable (PE) files. This work contributes to identifying the minimum feature set for malware detection employing a rough set dependent feature significance combined with Ant Colony Optimization (ACO) as the heuristic-search technique. A malware dataset named claMP with both integrated features and raw features was considered as the benchmark dataset for this work. The analytical results prove that 97.15% and 92.8% data size optimization has been achieved with a minimum loss of accuracy for claMP integrated and raw datasets, respectively.
机译:恶意软件是一种恶意程序,可能导致安全漏洞系统。恶意软件检测和分类是信息安全性研究的燃烧主题之一。可执行文件是静态恶意软件检测的输入的主要来源。机器学习技术在基于行为的恶意软件检测中非常有效,并且需要具有不同功能的恶意软件数据集。在Windows中,可以通过分析便携式可执行文件(PE)文件来检测恶意软件。这项工作有助于识别用于Malware检测的最小特征,采用粗糙集相关的特征意义与蚁群优化(ACO)相结合作为启发式搜索技术。具有集成功能和原始功能的名为Clamp的恶意软件数据集被视为本工作的基准数据集。分析结果证明了97.15%和92.8%的数据尺寸优化,分别为钳位集成和原始数据集的最小精度损失。

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