机器学习在比特币勒索软件家族预测中的应用

Shengyun Xu
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引用次数: 2

摘要

近年来,勒索软件攻击日益猖獗,导致许多大公司或金融机构遭受勒索软件攻击,损失惨重。比特币是勒索软件家族要求的一种支付手段。通过对比特币交易特征的比较分析,可以预测勒索软件家族的类型。因此,本文利用机器学习的算法,提出了勒索软件家族的预测方法,以达到帮助被攻击机构有效避免被勒索的更好效果。在传统的方法中,勒索软件家族的判断只能依靠人的经验和主观判断,而不能对比特币交易和预测结果进行准确、批量的分析。本文利用大量已知的比特币交易特征数据集进行分析和建模。首先,我们进行描述性统计分析,探讨不同勒索软件家族在比特币交易行为上的差异。接下来,我们使用一系列机器学习模型建立Ransomware Family的预测模型,并进行识别和分类,以帮助避免Ransomware带来的经济损失。最后,我们发现勒索病毒科物种受年份的影响最为显著。此外,可以发现boost模型的精度最高,测试误差仅为3%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Application of Machine Learning in Bitcoin Ransomware Family Prediction
In recent years, ransomware attacks have become increasingly rampant, resulting in many large companies or financial institutions suffering heavy losses from ransomware attacks. Bitcoin, is a means of payment demanded by the Ransomware Family. By comparing and analyzing the characteristics of bitcoin transactions, we can predict the types of Ransomware Family. Therefore, in this paper, the algorithm of machine learning is used to put forward the prediction method of Ransomware Family, so as to achieve the better effect of helping the attacked institutions to avoid being extorted effectively. In the traditional method, the judgment of Ransomware Family can only rely on human experience and subjective judgment, instead of accurate and batch analysis of Bitcoin transactions and prediction results. In this paper, a large number of known data sets of bitcoin's transaction features are used for analysis and modeling. First, we carried out descriptive statistical analysis to explore the differences between different Ransomware Families in bitcoin trading behavior. Next, we used a series of machine learning models to build the prediction model of Ransomware Family and conduct identification and classification, so as to help avoid financial losses from the Ransomware. Finally, we found that Ransomware family species were most significantly affected by year. In addition, it can be found that the accuracy of the Boosting model is the highest, and the test error is only about 3%.
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