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TCP Security Action Prediction Algorithm based on Machine Learning: A Review

Mehrum Shaikh, Nakhate Pratiksha, Nitin Birajdar, Prachi Deshpande

Abstract


The growing range of applications available on the Internet and continuous technological improvements have led to an increase in network security incidents and cyber-attacks. Consequently, computer network security is becoming more and more important. Network security can be allowed or prohibited by a TCP firewall; a device used for computer network security. When utilising classic firewalls, network managers must periodically choose which packets to admit and prohibit to keep computer networks secure. However, due to the vast amount of data on the internet, network managers have an extremely difficult duty. Consequently, it is imperative to use computer technology and machine learning to overcome this problem.


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References


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