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Information-Theoretic Detection of Masquerade Mimicry Attacks

机译:信息级模仿攻击的信息 - 理论检测

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In a masquerade attack, an adversary who has stolen a legitimate user's credentials attempts to impersonate him to carry out malicious actions. Automatic detection of such attacks is often undertaken constructing models of normal behaviour of each user and then measuring significant departures from them. One potential vulnerability of this approach is that anomaly detection algorithms are generally susceptible of being deceived. In this paper, we first investigate how a resourceful masquerader can successfully evade detection while still accomplishing his goals. We then propose an algorithm based on the Kullback-Leibler divergence which attempts to identify if a sufficiently anomalous attack is present within an apparently normal request. Our experimental results indicate that the proposed scheme achieves considerably better detection quality than adversarial-unaware approaches.
机译:在化妆舞会袭击中,一个偷走了合法的用户凭证的对手试图让他冒充恶意行为。自动检测此类攻击通常是构建每个用户的正常行为的模型,然后测量它们的大量偏离。这种方法的一个潜在脆弱性是异常检测算法通常很容易被欺骗。在本文中,我们首先调查有资格丰富的伪装者如何成功地逃避检测,同时仍然实现他的目标。然后,我们提出了一种基于Kullback-Leibler发散的算法,该算法试图识别是否存在足够异常的攻击在明显正常的请求中。我们的实验结果表明,该方案的检测质量大于对抗性近似的方法。

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