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APTMalInsight: Identify and cognize APT malware based on system call information and ontology knowledge framework

机译:ApTmalInsight:识别和认知基于系统调用信息和本体知识框架的APT恶意软件

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摘要

APT attacks have posed serious threats to the security of cyberspace nowadays which are usually tailored for specific targets. Identification and understanding of APT attacks remains a key issue for society. Attackers often utilize malware as the weapons to launch cyber-attacks. For this reason, detecting APT malware and gaining an insight of its malicious behaviors can strengthen the power to understand and counteract APT attacks. Based on the above motivation, this paper proposes a novel APT malware detection and cognition framework named APTMalInsight aiming at identifying and cognizing APT malware by leveraging system call information and ontology knowledge. We systematically study APT malware and extracts dynamic system call information to describe its behavioral characteristics. With respect to the established feature vectors, the APT malware can be detected and clustered into their belonging families accurately. Furthermore, a horizontal comparison between APT malware and the traditional malware is conducted from the perspective of behavior types, to understand the behavioral characteristics of APT malware in depth. On the above basis, the ontology model is introduced to construct the APT malware knowledge framework to represent its typical malicious behaviors, thereby implementing the systematic cognition of APT malware and providing contextual understanding of APT attacks. The evaluation results based on real APT malware samples demonstrate that the detection and clustering accuracy can reach up to 99.28% and 98.85% respectively. In addition, APTMalInsight supplies an effective cognition framework for APT malware and enhances the capability to understand APT attacks. (C) 2020 The Authors. Published by Elsevier Inc.
机译:APT攻击对当今网络空间的安全构成了严重威胁,这些攻击通常针对特定目标。识别和理解APT攻击仍然是社会的一个关键问题。攻击者经常利用恶意软件作为发动网络攻击的武器。因此,检测APT恶意软件并了解其恶意行为可以增强理解和抵御APT攻击的能力。基于上述动机,本文提出了一种新的APT恶意软件检测和认知框架AptMallinsight,旨在利用系统调用信息和本体知识识别和认知APT恶意软件。我们系统地研究了APT恶意软件,并提取动态系统调用信息来描述其行为特征。对于已建立的特征向量,APT恶意软件可以被检测并准确地聚类到其所属的家族中。此外,从行为类型的角度对APT恶意软件和传统恶意软件进行了横向比较,以深入了解APT恶意软件的行为特征。在此基础上,引入本体模型,构建APT恶意软件知识框架来表示其典型的恶意行为,从而实现对APT恶意软件的系统认知,提供APT攻击的上下文理解。基于真实APT恶意软件样本的评估结果表明,检测和聚类准确率分别可达99.28%和98.85%。此外,APTMalInsight为APT恶意软件提供了一个有效的认知框架,并增强了理解APT攻击的能力。(C) 2020年,作者。爱思唯尔公司出版。

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