Smart City Gnosys

Smart city article details

Title Performance Analysis Of Machine Learning Algorithms In Intrusion Detection System: A Review
ID_Doc 41664
Authors Saranya T.; Sridevi S.; Deisy C.; Chung T.D.; Khan M.K.A.A.
Year 2020
Published Procedia Computer Science, 171
DOI http://dx.doi.org/10.1016/j.procs.2020.04.133
Abstract The rapid growth of technologies not only formulates life easier but also exposes a lot of security issues. With the advancement of the Internet over years, the number of attacks over the Internet has been increased. Intrusion Detection System (IDS) is one of the supportive layers applicable to information security. IDS provide a salubrious environment for business and keeps away from suspicious network activities. Recently, Machine Learning (ML) algorithms are applied in IDS in order to identify and classify the security threats. This paper explores the comparative study of various ML algorithms used in IDS for several applications such as fog computing, Internet of Things (IoT), big data, smart city, and 5G network. In addition, this work also aims for classifying the intrusions using ML algorithms like Linear Discriminant Analysis (LDA), Classification and Regression Trees (CART) and Random Forest. The work was tested with the KDD-CUP dataset and their efficiency was measured and also compared along with the latest researches. © 2020 The Authors. Published by Elsevier B.V.
Author Keywords Accuracy; Classification; Intrusion Detection System(IDS); Machine Learning(ML) Algorithm; Random Forest; Support Vector Machine


Similar Articles


Id Similarity Authors Title Published
5365 View0.945Natarajan B.; Bose S.; Maheswaran N.; Logeswari G.; Anitha T.A Survey: An Effective Utilization Of Machine Learning Algorithms In Iot Based Intrusion Detection System12th IEEE International Conference on Advanced Computing, ICoAC 2023 (2023)
33346 View0.9Berhili M.; Chaieb O.; Benabdellah M.Intrusion Detection Systems In Iot Based On Machine Learning: A State Of The ArtProcedia Computer Science, 251 (2024)
814 View0.898Basheer L.; Ranjana P.A Comparative Study Of Various Intrusion Detections In Smart Cities Using Machine Learning2022 International Conference on IoT and Blockchain Technology, ICIBT 2022 (2022)
37199 View0.896Al-Ambusaidi M.; Yinjun Z.; Muhammad Y.; Yahya A.Ml-Ids: An Efficient Ml-Enabled Intrusion Detection System For Securing Iot Networks And ApplicationsSoft Computing, 28, 2 (2024)
19240 View0.888Rangani H.; Chandrashekar K.Detection And Prevention Of Cyber Threats In Smart Cities Using Machine Learning And Intrusion Detection Systems2nd International Conference on Self Sustainable Artificial Intelligence Systems, ICSSAS 2024 - Proceedings (2024)
2187 View0.886Gill K.S.; Dhillon A.A Hybrid Machine Learning Framework For Intrusion Detection System In Smart CitiesEvolving Systems, 15, 6 (2024)
23835 View0.883Arabiat A.; Altayeb M.Enhancing Internet Of Things Security: Evaluating Machine Learning Classifiers For Attack PredictionInternational Journal of Electrical and Computer Engineering, 14, 5 (2024)
9197 View0.882Janani Pandeeswari G.; Jeyanthi S.Analysis Of Intrusion Detection Using Machine Learning Techniques2nd IEEE International Conference on Advanced Technologies in Intelligent Control, Environment, Computing and Communication Engineering, ICATIECE 2022 (2022)
59592 View0.882Khatkar M.; Kumar K.; Kumar B.Unfolding The Network Dataset To Understand The Contribution Of Features For Detecting Malicious Activities Using Ai/MlMaterials Today: Proceedings, 59 (2022)
1446 View0.882Rakha M.A.; Akbar A.; Chhabra G.; Kaushik K.; Arshi O.; Khan I.U.A Detailed Comparative Study Of Ai-Based Intrusion Detection System For Smart CitiesProceedings of International Conference on Communication, Computer Sciences and Engineering, IC3SE 2024 (2024)