基于用户行为的恶意软件受害风险预测

F. Lévesque, José M. Fernandez, Anil Somayaji
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引用次数: 23

摘要

如果我们想要建立适当的策略来处理和减轻各种形式的计算机犯罪的影响,了解哪种类型的用户和使用方式更容易感染恶意软件是至关重要的。因此,真实使用数据对于做出更好的基于证据的决策至关重要,这将提高用户的安全性。为此,我们对50名受试者进行了为期4个月的实地研究,并通过监测可能的感染和收集用户行为数据来收集实际使用数据。在本文中,我们提出了基于用户行为预测恶意软件受害风险的第一次尝试。使用神经网络,我们开发了一个预测模型,在预测用户被感染的可能性方面准确率高达80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk prediction of malware victimization based on user behavior
Understanding what types of users and usage are more conducive to malware infections is crucial if we want to establish adequate strategies for dealing and mitigating the effects of computer crime in its various forms. Real-usage data is therefore essential to make better evidence-based decisions that will improve users' security. To this end, we performed a 4-month field study with 50 subjects and collected real-usage data by monitoring possible infections and gathering data on user behavior. In this paper, we present a first attempt at predicting risk of malware victimization based on user behavior. Using neural networks we developed a predictive model that has an accuracy of up to 80% at predicting user's likelihood of being infected.
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