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An entropy-based unsupervised anomaly detection pattern learning algorithm

机译:基于熵的无监督异常检测模式学习算法

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摘要

Currently, most anomaly detection pattern learning algorithms require a set of purely normal data from which they train their model. If the data contain some intrusions buried within the training data, the algorithm may not detect these attacks because it will assume that they are normal. In reality, it is very hard to guarantee that there are no attack items in the collected training data. Focusing on this problem, in this paper,firstly a new anomaly detection measurement is proposed according to the probability characteristics of intrusion instances and normal instances. Secondly, on the basis of anomaly detection measure, we present a clusteringbased unsupervised anomaly detection patterns learning algorithm, which can overcome the shortage above. Finally, some experiments are conducted to verify the proposed algorithm is valid.
机译:当前,大多数异常检测模式学习算法都需要一组纯粹的正常数据,它们可以从中训练模型。如果数据包含隐藏在训练数据中的某些入侵,则该算法可能不会检测到这些攻击,因为它将假定它们是正常的。实际上,很难保证所收集的训练数据中没有攻击项目。针对这一问题,本文首先根据入侵实例和正常实例的概率特征提出了一种新的异常检测措施。其次,在异常检测手段的基础上,提出了一种基于聚类的无监督异常检测模式学习算法,可以克服上述不足。最后,通过一些实验验证了所提算法的有效性。

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