利用侧信道快速检测勒索软件

Michael A. Taylor, Eric C. Larson, Mitchell A. Thornton
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引用次数: 3

摘要

描述并评估了一种检测受感染主机中勒索软件的新方法。该方法利用来自机载传感器的数据流来识别勒索软件感染的启动过程。这些传感器流在现代计算系统中很常见,被用作理解系统状态的侧通道。研究表明,勒索软件检测可以以快速的方式实现,并且使用从机器学习预测模型派生的系统物理状态中细微但可区分的变化是一种有效的技术。由各种传感器输出组成的特征向量与检测标准相结合,以预测勒索软件存在的二进制状态与正常操作。这种方法的一个优点是,以前未知的或零日版本的勒索软件容易受到这种检测方法的攻击,因为不需要事先了解恶意软件的特征。在勒索软件攻击期间,使用各种不同的系统负载和不同的加密方法进行了实验。使用两个测试系统,其中一个具有相对较低的可用传感器数据量,而另一个具有相对较高的可用传感器数据量。在“传感器丰富”的系统中,攻击检测的平均时间为7.79秒,无论加密方法和系统负载如何,二进制系统状态预测的平均马修斯相关系数为0.8905。该模型标记了所有测试过的攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid Ransomware Detection through Side Channel Exploitation
A new method for the detection of ransomware in an infected host is described and evaluated. The method utilizes data streams from on-board sensors to fingerprint the initiation of a ransomware infection. These sensor streams, which are common in modern computing systems, are used as a side channel for understanding the state of the system. It is shown that ransomware detection can be achieved in a rapid manner and that the use of slight, yet distinguishable changes in the physical state of a system as derived from a machine learning predictive model is an effective technique. A feature vector, consisting of various sensor outputs, is coupled with a detection criteria to predict the binary state of ransomware present versus normal operation. An advantage of this approach is that previously unknown or zero-day version s of ransomware are vulnerable to this detection method since no apriori knowledge of the malware characteristics are required. Experiments are carried out with a variety of different system loads and with different encryption methods used during a ransomware attack. Two test systems were utilized with one having a relatively low amount of available sensor data and the other having a relatively high amount of available sensor data. The average time for attack detection in the "sensor-rich" system was 7.79 seconds with an average Matthews correlation coefficient of 0.8905 for binary system state predictions regardless of encryption method and system load. The model flagged all attacks tested.
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