Anomalous Web Payload Detection: Evaluating the Resilience of 1-Grams Based Classifiers.

Studies in Computational Intelligence(2015)

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摘要
Anomaly payload detection looks for payloads that deviate from a predefined model of normality. Defining normality requires an intelligent approach. Machine learning algorithms have been widely applied to build classifiers that distinguish normal from anomalous activity. These algorithms construct vectors of features extracted from raw payloads of a given dataset and train the classifier with them. The success of the detection highly depends on the potential of the training dataset to properly represent network traffic. In this paper we show that an adversary knowing the distribution of the dataset and the specific feature construction method may generate attack vectors evading the classifier. Particularly, in the case the classifier uses a simple feature construction method based on 1-grams, getting real-world payloads to evade the classifier is feasible. We present experimental results regarding four well-known classification algorithms, namely, C4.5, CART, Support Vector Machines (SVM) and MultiLayer Perceptron (MLP).
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