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Key-Recovery Attacks on KIDS, a Keyed Anomaly Detection System

机译:对密钥异常检测系统KIDS的密钥恢复攻击

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摘要

Most anomaly detection systems rely on machine learning algorithms to derive a model of normality that is later used to detect suspicious events. Some works conducted over the last years have pointed out that such algorithms are generally susceptible to deception, notably in the form of attacks carefully constructed to evade detection. Various learning schemes have been proposed to overcome this weakness. One such system is Keyed IDS (KIDS), introduced at DIMVA “10. KIDS” core idea is akin to the functioning of some cryptographic primitives, namely to introduce a secret element (the key) into the scheme so that some operations are infeasible without knowing it. In KIDS the learned model and the computation of the anomaly score are both key-dependent, a fact which presumably prevents an attacker from creating evasion attacks. In this work we show that recovering the key is extremely simple provided that the attacker can interact with KIDS and get feedback about probing requests. We present realistic attacks for two different adversarial settings and show that recovering the key requires only a small amount of queries, which indicates that KIDS does not meet the claimed security properties. We finally revisit KIDS' central idea and provide heuristic arguments about its suitability and limitations.
机译:大多数异常检测系统都依赖于机器学习算法来得出正常性模型,该模型随后可用于检测可疑事件。过去几年中进行的一些工作指出,此类算法通常容易受到欺骗,特别是以精心构造的逃避检测攻击的形式。已经提出了各种学习方案来克服这一弱点。这样的系统之一就是DIMVA“ 10.引入的密钥IDS(KIDS)”。 KIDS的核心思想类似于某些密码原语的功能,即在方案中引入一个秘密元素(密钥),以使某些操作在不知情的情况下是不可行的。在KIDS中,学习的模型和异常分数的计算均与密钥有关,这一事实可能阻止了攻击者进行逃避攻击。在这项工作中,我们表明,只要攻击者可以与KIDS交互并获得有关探测请求的反馈,恢复密钥就非常简单。我们针对两种不同的对抗设置提出了现实的攻击,并表明恢复密钥仅需要少量查询,这表明KIDS不符合要求的安全性。我们最终将重新审视KIDS的中心思想,并就其适用性和局限性提供启发式的论据。

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