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System Call-Based Detection of Malicious Processes

机译:基于系统调用的恶意进程检测

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摘要

System call analysis is a behavioral malware detection technique that is popular due to its promising detection results and ease of implementation. This study describes a system that uses system call analysis to detect malware that evade traditional defenses. The system monitors executing processes to identify compromised hosts in production environments. Experimental results compare the effectiveness of multiple feature extraction strategies and detectors based on their detection accuracy at low false positive rates. Logistic regression and support vector machines consistently outperform log-likelihood ratio and signature detectors as processing and detection methods. A feature selection study indicates that a relatively small set of system call 3-grams provide detection accuracy comparable to that of more complex models. A case study indicates that the detection system performs well against a variety of malware samples, benign workloads, and host configurations.
机译:系统调用分析是一种行为恶意软件检测技术,由于其有希望的检测结果和易于实施而非常受欢迎。这项研究描述了一种使用系统调用分析来检测逃避传统防御的恶意软件的系统。系统监视执行过程,以识别生产环境中的受感染主机。实验结果根据低误报率下的检测精度比较了多种特征提取策略和检测器的有效性。 Logistic回归和支持向量机在处理和检测方法上始终优于对数似然比和签名检测器。功能选择研究表明,相对较小的一组系统调用3克,其检测精度可与更复杂的模型相媲美。案例研究表明,该检测系统在处理各种恶意软件样本,良性工作负载和主机配置方面表现良好。

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