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Network Security Evaluation Using Deep Neural Network

Loreen Mahmoud, Raja Praveen K N

202018 citationsDOI

Abstract

One of the most significant systems in computer network security assurance is the assessment of computer network security. With the goal of finding an effective method for performing the process of security evaluation in a computer network, this paper uses a deep neural network to be responsible for the task of security evaluating. The DNN will be built with python on Spyder IDE, it will be trained and tested by 17 network security indicators then the output that we get represents one of the security levels that have been already defined. The maj or purpose is to enhance the ability to determine the security level of a computer network accurately based on its selected security indicators. The method that we intend to use in this paper in order to evaluate network security is simple, reduces the human factors interferences, and can obtain the correct results of the evaluation rapidly. We will analyze the results to decide if this method will enhance the process of evaluating the security of the network in terms of accuracy.

Topics & Concepts

Computer scienceNetwork securityNetwork Access ControlSoftware security assuranceSecurity information and event managementSecurity serviceComputer security modelPython (programming language)Artificial neural networkNetwork security policyComputer securityProcess (computing)Information securityCloud computing securityArtificial intelligenceOperating systemCloud computingNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsInternet Traffic Analysis and Secure E-voting
Network Security Evaluation Using Deep Neural Network | Litcius