Visible to the public Feature-based Intrusion Detection System with Support Vector Machine

TitleFeature-based Intrusion Detection System with Support Vector Machine
Publication TypeConference Paper
Year of Publication2022
AuthorsKhodaskar, Manish, Medhane, Darshan, Ingle, Rajesh, Buchade, Amar, Khodaskar, Anuja
Conference Name2022 IEEE International Conference on Blockchain and Distributed Systems Security (ICBDS)
Date Publishedsep
Keywordscomposability, feature extraction, feature selection, Heuristic algorithms, Intrusion detection, intrusion detection system, Metrics, pubcrawl, resilience, Resiliency, supply vector machines, support vector machine, support vector machine classification, Support vector machines, Systems architecture, Training
AbstractToday billions of people are accessing the internet around the world. There is a need for new technology to provide security against malicious activities that can take preventive/ defensive actions against constantly evolving attacks. A new generation of technology that keeps an eye on such activities and responds intelligently to them is the intrusion detection system employing machine learning. It is difficult for traditional techniques to analyze network generated data due to nature, amount, and speed with which the data is generated. The evolution of advanced cyber threats makes it difficult for existing IDS to perform up to the mark. In addition, managing large volumes of data is beyond the capabilities of computer hardware and software. This data is not only vast in scope, but it is also moving quickly. The system architecture suggested in this study uses SVM to train the model and feature selection based on the information gain ratio measure ranking approach to boost the overall system's efficiency and increase the attack detection rate. This work also addresses the issue of false alarms and trying to reduce them. In the proposed framework, the UNSW-NB15 dataset is used. For analysis, the UNSW-NB15 and NSL-KDD datasets are used. Along with SVM, we have also trained various models using Naive Bayes, ANN, RF, etc. We have compared the result of various models. Also, we can extend these trained models to create an ensemble approach to improve the performance of IDS.
DOI10.1109/ICBDS53701.2022.9935972
Citation Keykhodaskar_feature-based_2022