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A machine learning approach for linux malware detection

机译:Linux恶意软件检测的机器学习方法

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摘要

The increasing number of malware is becoming a serious threat to the private data as well as to the expensive computer resources. Linux is a Unix based machine and gained popularity in recent years. The malware attack targeting Linux has been increased recently and the existing malware detection methods are insufficient to detect malware efficiently. We are introducing a novel approach using machine learning for identifying malicious Executable Linkable Files. The system calls are extracted dynamically using system call tracer Strace. In this approach we identified best feature set of benign and malware specimens to built classification model that can classify malware and benign efficiently. The experimental results are promising which depict a classification accuracy of 97% to identify malicious samples.
机译:越来越多的恶意软件正在成为私人数据以及昂贵的计算机资源的严重威胁。 Linux是基于Unix的机器,近年来获得了流行。目标Linux的恶意软件攻击最近已增加,并且现有的恶意软件检测方法不足以有效地检测恶意软件。我们正在使用机器学习来介绍一种新的方法来识别恶意可执行的可链接文件。系统调用使用系统调用跟踪器符号动态提取。在这种方法中,我们确定了最佳的良性和恶意软件标本集,建立了可以对恶意软件和良性有效分类恶意软件和良性的分类模型。实验结果是有前途的,描绘了97%的分类准确性,以识别恶意样本。

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