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Comparison of feature selection and classification algorithms in identifying malicious executables

机译:特征选择和分类算法在识别恶意可执行文件中的比较

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摘要

Malicious executables, often spread as email attachments, impose serious security threats to computer systems and associated networks. We investigated the use of byte sequence frequencies as a way to automatically distinguish malicious from benign executables without actually executing them. In a series of experiments, we compared classification accuracies over seven feature selection methods, four classification algorithms, and variable byte sequence lengths. We found that single-byte patterns provided surprisingly reliable features to separate malicious executables from benign. Between classifiers and feature selection methods, the overall performance of the models depended more on the choice of classifier than the method of feature selection. Support vector machine (SVM) classifiers were found to be superior in terms of prediction accuracy, training time, and aversion to overfitting.
机译:恶意可执行文件通常以电子邮件附件的形式传播,对计算机系统和关联的网络构成了严重的安全威胁。我们研究了使用字节序列频率作为自动区分恶意文件和良性可执行文件而无需实际执行它们的方法。在一系列实验中,我们比较了7种特征选择方法,4种分类算法和可变字节序列长度的分类准确性。我们发现单字节模式提供了令人惊讶的可靠功能,可将恶意可执行文件与良性文件区分开。在分类器和特征选择方法之间,模型的总体性能更多地取决于分类器的选择,而不是特征选择方法。支持向量机(SVM)分类器被发现在预测准确性,训练时间和对过度拟合的厌恶方面均表现出色。

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