An Effective System of Intrusion Detection on Deep Neural Network by Hybrid Optimization in Cyber Security

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Abstract

In present trends organizations are very much interested to protect data and prevent malware attack by using well flourished and excellent tools. Many algorithms are used for the intrusion detection system (IDS) and it has pros and cons. Here we proposed a novel method of intrusion detection using hybrid optimization techniques such as Gravity search algorithm with gray wolf optimization (GSGW). In this method the gray wolf technique has a leader for the continuous monitoring of the attacker and has a low false alarm rate and a high detection rate. The performance evaluation is done by the feature selection in NSL-KDD dataset. In the proposed method the experimental result reveals less false alarm rate, better accuracy and high Detection when compared to previous analysis.

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Bhaskar*, A. T., Hiwarkar, B. Dr. T., & Ramanjaneyulu, C. Dr. K. (2019). An Effective System of Intrusion Detection on Deep Neural Network by Hybrid Optimization in Cyber Security. International Journal of Engineering and Advanced Technology, 9(1), 1320–1327. https://doi.org/10.35940/ijeat.a1155.109119

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