Proactive Ransomware Detection Using Extremely Fast Decision Tree (EFDT) Algorithm: A Case Study

Comput. Pub Date : 2023-06-15 DOI:10.3390/computers12060121
Ibrahim Ba’abbad, O. Batarfi
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引用次数: 2

Abstract

Several malware variants have attacked systems and data over time. Ransomware is among the most harmful malware since it causes huge losses. In order to get a ransom, ransomware is software that locks the victim’s machine or encrypts his personal information. Numerous research has been conducted to stop and quickly recognize ransomware attacks. For proactive forecasting, artificial intelligence (AI) techniques are used. Traditional machine learning/deep learning (ML/DL) techniques, however, take a lot of time and decrease the accuracy and latency performance of network monitoring. In this study, we utilized the Hoeffding trees classifier as one of the stream data mining classification techniques to detect and prevent ransomware attacks. Three Hoeffding trees classifier algorithms are selected to be applied to the Resilient Information Systems Security (RISS) research group dataset. After configuration, Massive Online Analysis (MOA) software is utilized as a testing framework. The results of Hoeffding tree classifier algorithms are then assessed to choose the enhanced model with the highest accuracy and latency performance. In conclusion, the 99.41% classification accuracy was the highest result achieved by the EFDT algorithm in 66 ms.
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使用极快决策树(EFDT)算法的主动勒索软件检测:一个案例研究
随着时间的推移,一些恶意软件变种攻击了系统和数据。勒索软件是最有害的恶意软件之一,因为它会造成巨大的损失。为了获得赎金,勒索软件是一种锁定受害者的机器或加密其个人信息的软件。为了阻止和快速识别勒索软件攻击,已经进行了大量的研究。对于主动预测,使用人工智能(AI)技术。然而,传统的机器学习/深度学习(ML/DL)技术需要花费大量时间,并且降低了网络监控的准确性和延迟性能。在本研究中,我们利用Hoeffding树分类器作为流数据挖掘分类技术之一来检测和预防勒索软件攻击。选择了三种Hoeffding树分类器算法应用于弹性信息系统安全(RISS)研究组数据集。配置完成后,使用Massive Online Analysis (MOA)软件作为测试框架。然后评估Hoeffding树分类器算法的结果,以选择具有最高准确率和延迟性能的增强模型。综上所述,EFDT算法在66 ms内的分类准确率最高,达到99.41%。
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