Machine Learning-Based Ransomware Classification of Bitcoin Transactions

S. Alsaif
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引用次数: 4

Abstract

Ransomware attacks are one of the most dangerous related crimes in the coin market. To increase the challenge of fighting the attack, early detection of ransomware seems necessary. In this article, we propose a high-performance Bitcoin transaction predictive system that investigates Bitcoin payment transactions to learn data patterns that can recognize and classify ransomware payments for heterogeneous bitcoin networks into malicious or benign transactions. The proposed approach makes use of three supervised machine learning methods to learn the distinctive patterns in Bitcoin payment transactions, namely, logistic regression (LR), random forest (RF), and Extreme Gradient Boosting (XGBoost). We evaluate these ML-based predictive models on the BitcoinHeist ransomware dataset in terms of classification accuracy and other evaluation measures such as confusion matrix, recall, and F1-score. It turned out that the experimental results recorded by the XGBoost model achieved an accuracy of 99.08%. As a result, the resulting model accuracy is higher than many recent state-of-the-art models developed to detect ransomware payments in Bitcoin transactions.
基于机器学习的比特币交易勒索软件分类
勒索软件攻击是硬币市场上最危险的相关犯罪之一。为了增加对抗攻击的挑战,早期发现勒索软件似乎是必要的。在本文中,我们提出了一个高性能的比特币交易预测系统,该系统研究比特币支付交易,以学习可以识别和分类异构比特币网络的勒索软件支付为恶意或良性交易的数据模式。提出的方法利用三种监督机器学习方法来学习比特币支付交易中的独特模式,即逻辑回归(LR),随机森林(RF)和极端梯度增强(XGBoost)。我们在BitcoinHeist勒索软件数据集上评估了这些基于ml的预测模型,包括分类精度和其他评估指标,如混淆矩阵、召回率和f1分数。结果表明,XGBoost模型记录的实验结果达到了99.08%的准确率。因此,所得模型的准确性高于最近为检测比特币交易中的勒索软件支付而开发的许多最先进的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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