Visible to the public Intrusion Representation and Classification using Learning Algorithm

TitleIntrusion Representation and Classification using Learning Algorithm
Publication TypeConference Paper
Year of Publication2021
AuthorsBaniya, Babu Kaji
Conference Name2021 23rd International Conference on Advanced Communication Technology (ICACT)
KeywordsClassification algorithms, cybersecurity, decomposition, discriminatory, Fitness value, genetic algorithms, intrusion, Intrusion detection, Metrics, privacy, pubcrawl, security, Support vector machines, Testing, threat vectors, Training
AbstractAt present, machine learning (ML) algorithms are essential components in designing the sophisticated intrusion detection system (IDS). They are building-blocks to enhance cyber threat detection and help in classification at host-level and network-level in a short period. The increasing global connectivity and advancements of network technologies have added unprecedented challenges and opportunities to network security. Malicious attacks impose a huge security threat and warrant scalable solutions to thwart large-scale attacks. These activities encourage researchers to address these imminent threats by analyzing a large volume of the dataset to tackle all possible ranges of attack. In this proposed method, we calculated the fitness value of each feature from the population by using a genetic algorithm (GA) and selected them according to the fitness value. The fitness values are presented in hierarchical order to show the effectiveness of problem decomposition. We implemented Support Vector Machine (SVM) to verify the consistency of the system outcome. The well-known NSL-knowledge discovery in databases (KDD) was used to measure the performance of the system. From the experiments, we achieved a notable classification accuracies using a SVM of the current state of the art intrusion detection.
DOI10.23919/ICACT51234.2021.9370933
Citation Keybaniya_intrusion_2021