An I/O Request Packet (IRP) Driven Effective Ransomware Detection Scheme using Artificial Neural Network

Md. Ahsan Ayub, Andrea Continella, Ambareen Siraj
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引用次数: 11

Abstract

In recent times, there has been a global surge of ransomware attacks targeted at industries of various types and sizes from retail to critical infrastructure. Ransomware researchers are constantly coming across new kinds of ransomware samples every day and discovering novel ransomware families out in the wild. To mitigate this ever-growing menace, academia and industry-based security researchers have been utilizing unique ways to defend against this type of cyber-attacks. I/O Request Packet (IRP), a low-level file system I/O log, is a newly found research paradigm for defense against ransomware that is being explored frequently. As such in this study, to learn granular level, actionable insights of ransomware behavior, we analyze the IRP logs of 272 ransomware samples belonging to 18 different ransomware families captured during individual execution. We further our analysis by building an effective Artificial Neural Network (ANN) structure for successful ransomware detection by learning the underlying patterns of the IRP logs. We evaluate the ANN model with three different experimental settings to prove the effectiveness of our approach. The model demonstrates outstanding performance in terms of accuracy, precision score, recall score, and F1 score, i.e., in the range of 99.7%±0.2%.
一种基于人工神经网络的I/O请求包驱动的有效勒索软件检测方案
最近,全球范围内针对从零售到关键基础设施等各种类型和规模的行业的勒索软件攻击激增。勒索软件研究人员每天都在不断地遇到新的勒索软件样本,并在野外发现新的勒索软件家族。为了减轻这种日益增长的威胁,学术界和行业安全研究人员一直在利用独特的方法来防御这种类型的网络攻击。I/O请求包(IRP)是一种低级文件系统I/O日志,是一种新发现的用于防御勒索软件的研究范式,正在被频繁探索。因此,在本研究中,为了了解勒索软件行为的颗粒级,可操作的见解,我们分析了在单个执行期间捕获的属于18个不同勒索软件家族的272个勒索软件样本的IRP日志。通过学习IRP日志的底层模式,我们构建了一个有效的人工神经网络(ANN)结构,用于成功检测勒索软件,从而进一步进行了分析。我们用三种不同的实验设置来评估人工神经网络模型,以证明我们方法的有效性。该模型在准确率、精密度评分、召回率评分和F1评分方面表现优异,均在99.7%±0.2%的范围内。
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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