Attack recall control in anomaly detection

Anh Trần Quang, Qianli Zhang, Xing Li
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引用次数: 2

Abstract

This paper presents an approach to control the attack recall in an anomaly detection system using support vector machines (SVM). The recall and precision of SVM are controlled by the selection of the training model. The training model is selected by optimization method using genetic algorithm. A SVM training model optimization problem is presented and an expected attack recall is controlled by a tradeoff parameter /spl rho/ in the objective function. Experimental results demonstrate that as /spl rho/ increases from 0 to 1, the recall increases from 0 to 1. If we use the value of /spl rho/ to estimate the recall, the mean square error of this estimation is decreased during the evolution of the training model. Our approach allows a user to design a system with an expected recall while the precision is high.
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异常检测中的攻击召回控制
提出了一种利用支持向量机控制异常检测系统攻击召回的方法。支持向量机的查全率和查准率由训练模型的选择来控制。采用遗传算法优选训练模型。提出了一个支持向量机训练模型优化问题,并通过目标函数中的权衡参数/spl rho/控制预期攻击召回率。实验结果表明,当/spl rho/从0增加到1时,召回率从0增加到1。如果我们使用/spl rho/的值来估计召回,在训练模型的进化过程中,该估计的均方误差减小。我们的方法允许用户设计一个具有预期召回率的系统,同时精度很高。
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