基于过程挖掘和分类算法的勒索软件检测

A. Bahrani, Amir Jalaly Bidgly
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引用次数: 6

摘要

近年来,快速增长的勒索软件攻击已成为企业、政府和互联网用户面临的严重威胁。计算能力、内存等的提高以及密码学的进步使得勒索软件攻击变得更加复杂。因此,需要有效的方法来应对勒索软件。虽然针对勒索软件的检测提出了很多方法,但这些方法在检测勒索软件方面效率低下,这一领域还需要进行更多的研究。本文提出了一种利用过程挖掘方法从良性软件中识别勒索软件的新方法。该方法利用过程挖掘技术从事件日志中发现过程模型,然后从过程模型中提取特征,利用这些特征和分类算法对勒索软件进行分类。本文表明,使用分类算法和过程挖掘可以很好地识别勒索软件。通过对21个勒索软件家族和一些良性样本的研究,评估了我们提出的方法的准确性和性能。实验结果表明,j48算法和随机森林算法在检测勒索软件时准确率最高,达到95%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ransomware detection using process mining and classification algorithms
The fast growing of ransomware attacks has become a serious threat for companies, governments and internet users, in recent years. The increasing of computing power, memory and etc. and the advance in cryptography has caused the complicating the ransomware attacks. Therefore, effective methods are required to deal with ransomwares. Although, there are many methods proposed for ransomware detection, but these methods are inefficient in detection ransomwares, and more researches are still required in this field. In this paper, we have proposed a novel method for identify ransomware from benign software using process mining methods. The proposed method uses process mining to discover the process model from the events logs, and then extracts features from this process model and using these features and classification algorithms to classify ransomwares. This paper shows that the use of classification algorithms along with the process mining can be suitable to identify ransomware. The accuracy and performance of our proposed method is evaluated using a study of 21 ransomware families and some benign samples. The results show j48 and random forest algorithms have the best accuracy in our method and can achieve to 95% accuracy in detecting ransomwares.
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