RiskTeller: Predicting the Risk of Cyber Incidents

Leyla Bilge, Yufei Han, Matteo Dell'Amico
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引用次数: 71

Abstract

The current evolution of the cyber-threat ecosystem shows that no system can be considered invulnerable. It is therefore important to quantify the risk level within a system and devise risk prediction methods such that proactive measures can be taken to reduce the damage of cyber attacks. We present RiskTeller, a system that analyzes binary file appearance logs of machines to predict which machines are at risk of infection months in advance. Risk prediction models are built by creating, for each machine, a comprehensive profile capturing its usage patterns, and then associating each profile to a risk level through both fully and semi-supervised learning methods. We evaluate RiskTeller on a year-long dataset containing information about all the binaries appearing on machines of 18 enterprises. We show that RiskTeller can use the machine profile computed for a given machine to predict subsequent infections with the highest prediction precision achieved to date.
风险柜员:预测网络事件的风险
当前网络威胁生态系统的演变表明,没有一个系统可以被认为是无懈可击的。因此,重要的是量化系统内的风险水平,并设计风险预测方法,以便采取主动措施来减少网络攻击的损害。我们介绍了RiskTeller,这是一个分析机器二进制文件外观日志的系统,可以提前几个月预测哪些机器有感染的风险。建立风险预测模型的方法是,为每台机器创建一个全面的概要文件,捕获其使用模式,然后通过完全监督和半监督学习方法将每个概要文件与风险级别相关联。我们在一个长达一年的数据集上评估了RiskTeller,该数据集包含了18家企业机器上出现的所有二进制文件的信息。我们表明,RiskTeller可以使用为给定机器计算的机器配置文件来预测随后的感染,预测精度达到了迄今为止的最高水平。
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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