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Reasoning crypto ransomware infection vectors with Bayesian networks

机译:用贝叶斯网络推理加密勒索软件感染向量

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Ransomware techniques have evolved over time with the most resilient attacks making data recovery practically impossible. This has driven countermeasures to shift towards recovery against prevention but in this paper, we model ransomware attacks from an infection vector point of view. We follow the basic infection chain of crypto ransomware and use Bayesian network statistics to infer some of the most common ransomware infection vectors. We also employ the use of attack and sensor nodes to capture uncertainty in the Bayesian network.
机译:Ransomware技术随着时间的推移而发展,最有弹性的攻击实际上是不可能的。这使得对防止预防恢复的促进对策,但在本文中,我们从感染矢量的角度模拟赎金软件攻击。我们遵循Crypto赎金软件的基本感染链,并使用贝叶斯网络统计数据推断出一些最常见的勒索软件感染载体。我们还采用攻击和传感器节点使用攻击和传感器节点来捕获贝叶斯网络中的不确定性。

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