Using Supervised Machine Learning Techniques, Create an Effective Intrusion Detection System.

Authors

  • Dr.J.Sasi Kiran, Dr.M.Chandra Naik, U.Mohan Srinivas, Dr.T.Siva Ratna Sai, B.Neelima

DOI:

https://doi.org/10.17762/msea.v69i1.1586

Abstract

Abstract - As Internet resources are used more often, network services are being attacked by hackers in creative ways. Network security is therefore becoming an essential component of the network substructure. Strong IDS (Intrusion Detection System) is required to efficiently and effectively identify such assaults. An IDS is aapparatus thoroughly examines apiecethenrespectively packet in in order to detect malevolent activity by dint of watching a system or network. IDS's primary function remains to spot unauthorized or unusual activity and alert the network administrator to it. IDS is thus a vital contrivanceon behalf of the linkageoverseer to protect the network from cooperationacknowledged and undiscovered. Effective intrusion detection systems may be implemented using machine learning techniques IDS. In this study, the categorization of the data was accomplished using four machine learning techniques: The NSL- KDD set of data be there used to train and assess these several machine learning models. Using feature selection techniques, undesirable and pointless characteristics from the dataset were eliminated. As a result, the dataset's dimensionality is reduced through article selection, which in turn lowers computing complexity. Three randomly  chosen feature the suggested of data. The recommended approach includes a categorization.

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Published

2023-01-12

How to Cite

Dr.J.Sasi Kiran, Dr.M.Chandra Naik, U.Mohan Srinivas, Dr.T.Siva Ratna Sai, B.Neelima. (2023). Using Supervised Machine Learning Techniques, Create an Effective Intrusion Detection System. Mathematical Statistician and Engineering Applications, 69(1), 61–69. https://doi.org/10.17762/msea.v69i1.1586

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Articles