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Precise Extraction of Malicious Behaviors

机译:精确提取恶意行为

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摘要

In recent years, the damage cost caused by malwares is huge. Thus, malware detection is a big challenge. The task of specifying malware takes a huge amount of time and engineering effort since it currently requires the manual study of the malicious code. Thus, in order to avoid the tedious manual analysis of malicious codes, this task has to be automatized. To this aim, we propose in this work to represent malicious behaviors using extended API call graphs, where nodes correspond to API function calls, edges specify the execution order between the API functions, and edge labels indicate the dependence relation between API functions parameters. We define new static analysis techniques that allow to extract such graphs from programs, and show how to automatically extract, from a set of malicious and benign programs, an extended API call graph that represents the malicious behaviours. Finally, We show how this graph can be used for malware detection. We implemented our techniques and obtained encouraging results: 95.66% of detection rate with 0% of false alarms.
机译:近年来,棕褐色造成的损害成本巨大。因此,恶意软件检测是一个很大的挑战。指定恶意软件的任务是占据了大量的时间和工程工作,因为它目前需要对恶意代码的手动研究。因此,为了避免对恶意代码的繁琐手动分析,必须自动化此任务。为了达到这个目的,我们提出在这项工作中使用的扩展API调用图,其中节点对应于API函数调用来表示恶意行为,边缘指定API函数之间的执行顺序,和边缘标签表示API函数参数间的依赖关系。我们定义新的静态分析技术,允许从程序中提取这样的图,并展示如何自动提取,从一组恶意的和良性的程序,表示恶意行为的扩展API调用图。最后,我们展示了该图表如何用于恶意软件检测。我们实施了我们的技术,并获得了令人鼓舞的结果:95.66%的检测率,0%的误报。

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