The neural network models for IDS based on the asymmetric costs of false negative errors and false positive errors

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摘要

This paper investigates the asymmetric costs of false positive and negative errors to enhance the IDS performance. The proposed method utilizes the neural network model to consider the cost ratio of false negative errors to false positive errors. Compared with false positive errors, false negative errors incur a greater loss to organizations which are connected to the systems by networks. This method is designed to accomplish both security and system performance objectives. The results of our empirical experiment show that the neural network model provides high accuracy in intrusion detection. In addition, the simulation results show that the effectiveness of intrusion detection can be enhanced by considering the asymmetric costs of false negative and false positive errors.

论文关键词:Intrusion detection systems,Asymmetric costs of error,Neural networks

论文评审过程:Available online 6 February 2003.

论文官网地址:https://doi.org/10.1016/S0957-4174(03)00007-1