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Intrusion Detection System Based on Integrated System Calls Graph and Neural Networks

机译:基于集成系统呼叫图和神经网络的入侵检测系统

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摘要

Computer security is one of the main challenges of today’s technological infrastructures, whereas intrusion detection systems are one of the most widely used technologies to secure computer systems. The intrusion detection systems use a variety of information sources, one of the most important sources are the applications’ system calls. The intrusion detection systems use many different detection techniques, e.g. system calls sequences, text classification techniques and system calls graphs. However, existing techniques obtain poor results in the detection of complex attack patterns, so it is necessary to improve the detection results. This paper presents an intrusion detection system model that integrates multiple detection techniques into a single system with the goal of modeling the global behavior of the applications. In addition, the paper proposes a new modified system calls graph to integrate and represent the information of the different techniques in a single data structure. The system uses a deep neural network to combine the results of the different detection techniques used in the global model. The result of the study shows the improvement obtained in the detection results with respect to the use of individual techniques, the proposed model achieves higher detection rates and lower false positives. The proposal has been validated onto three datasets with different levels of complexity.
机译:计算机安全是当今技术基础设施的主要挑战之一,而入侵检测系统是最广泛使用的技术来保护计算机系统的技术之一。入侵检测系统使用各种信息来源,最重要的来源之一是应用程序的系统调用。入侵检测系统使用许多不同的检测技术,例如,系统调用序列,文本分类技术和系统调用图。然而,现有技术在检测到复杂的攻击模式中获得差的结果,因此有必要改善检测结果。本文介绍了一种入侵检测系统模型,将多个检测技术集成到一个系统中,其目标是建模应用程序的全局行为。此外,本文提出了一种新的修改系统调用图来集成和代表单个数据结构中不同技术的信息。该系统使用深神经网络来组合全局模型中使用的不同检测技术的结果。该研究的结果表明,关于使用单独技术的检测结果中获得的改进,所提出的模型达到更高的检测率和较低的误报。该提案已被验证到三个数据集,具有不同程度的复杂性。

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