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The risk evaluation model of network information security based on improved BP neural network

机译:基于改进的BP神经网络的网络信息安全风险评估模型

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To improve the accuracy and reliability of the risk evaluation of network information security risk, this paper uses rough set attribution reduction to reduce the various factors that affect the network and information security risk, excluding the attributes associated with the decision-making and achieving a typical sample. Besides, in order to train the network, the degree of membership of a typical sample calculated by fuzzy method is as input to neural networks, expert value as the desired output of the network, which can increase the training speed and accuracy. The output of the network can be calculated using the trained network, and network information security risk assessment and decision-making can be achieved based on this output.
机译:为了提高网络信息安全风险风险评估的准确性和可靠性,本文使用粗糙集归因减少,以减少影响网络和信息安全风险的各种因素,不包括与决策相关的属性和实现典型的属性样本。此外,为了训练网络,通过模糊方法计算的典型样本的成员程度是神经网络的输入,专家价值作为网络的所需输出,这可以提高训练速度和准确性。可以使用培训的网络计算网络的输出,并且可以基于该输出来实现网络信息安全风险评估和决策。

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