A Supervised Machine Learning Ransomware Host-Based Detection Framework

Yotam Mkandawire, Aaron Zimba
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Abstract

Today, the term ransomware is frequently used in cybercrime headlines, its consequences have been on the rise leaving a trail of terrible losses in its wake. Both people and businesses have been victimized by ransomware, costing the victims millions of dollars in ransom payments. In addition, victims who were unable to pay the ransom or decrypt the data experienced data losses. This study uses dynamic malware analysis artifacts and supervised machine learning to detect ransomware at the host level. It takes on a thorough examination of the operational specifics of ransomware and suggests a supervised machine-learning approach to detection using various ransomware features derived from dynamic malware analysis. According to the findings, a Logistic Regression algorithm model with a 97.7% accuracy score offers a 99% success rate in ransomware detection. This demonstrates how well machine learning and dynamic malware analysis work together to detect ransomware activity at the host level. Systems security administrators can mitigate security risks by using this method.
基于监督机器学习的勒索软件主机检测框架
今天,勒索软件这个词经常出现在网络犯罪的头条新闻中,其后果一直在上升,随之而来的是一系列可怕的损失。个人和企业都成为了勒索软件的受害者,受害者为此付出了数百万美元的赎金。此外,无法支付赎金或无法解密数据的受害者还会遭受数据丢失。本研究使用动态恶意软件分析工件和监督机器学习来检测主机级别的勒索软件。它对勒索软件的操作细节进行了彻底的检查,并建议使用来自动态恶意软件分析的各种勒索软件特征来检测有监督的机器学习方法。根据研究结果,逻辑回归算法模型的准确率为97.7%,在勒索软件检测中成功率为99%。这展示了机器学习和动态恶意软件分析如何很好地协同工作,以检测主机级别的勒索软件活动。系统安全管理员可以通过此方法降低安全风险。
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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