Abstract

With the wide application of computer network, network security has attracted more and more attention. The main reason why all kinds of attacks on the network can pose a great threat to the network security is the vulnerability of the computer network system itself. Introducing neural network technology into computer network vulnerability assessment can give full play to the advantages of neural network in network vulnerability assessment. The purpose of this article is by organizing feature map neural network, and the combination of multilayer feedforward neural network, the training samples using SOM neural network clustering, the result of clustering are added to the original training samples and set a certain weight, based on the weighted iterative update ceaselessly, in order to improve the convergence speed of BP neural network. On the BP neural network, algorithm for LM algorithm was improved, the large matrix inversion in the LM algorithm using the parallel algorithm method is improved for solving system of linear equations, and use of computer network vulnerability assessment as the computer simulation and analysis on the actual example designs a set of computer network vulnerability assessment scheme, finally the vulnerability is lower than 0.75, which is beneficial to research on related theory and application to provide the reference and help.

Highlights

  • According to the statistics reported by the Internet information center over the years, the number of hacker attacks on computer users worldwide increases by at least 10% on average every year

  • With the increasing attention paid to computer network security, computer network vulnerability assessment has important research and application value

  • Because of the unique ability of nonlinear adaptive information processing, neural network overcomes the shortcomings of many traditional artificial intelligence information processing methods in pattern recognition, voice information recognition, unstructured information processing and other visual functions, so that it has been successfully applied in many fields of artificial intelligence

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Summary

Introduction

According to the statistics reported by the Internet information center over the years, the number of hacker attacks on computer users worldwide increases by at least 10% on average every year. Due to its inherent super adaptability and learning ability, neural network has been widely studied and applied in many artificial intelligence fields and has solved many information processing problems that are difficult to be solved by other traditional. Wang J Wireless Com Network (2020) 2020:222 artificial intelligence methods and technologies. Because of the unique ability of nonlinear adaptive information processing, neural network overcomes the shortcomings of many traditional artificial intelligence information processing methods in pattern recognition, voice information recognition, unstructured information processing and other visual functions, so that it has been successfully applied in many fields of artificial intelligence. The close combination of neural network and other traditional information processing methods of artificial intelligence will greatly promote the continuous innovation and development of related technologies such as traditional artificial intelligence and distributed information processing

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