Visible to the public Machine Learning and Data Mining in Cybersecurty

TitleMachine Learning and Data Mining in Cybersecurty
Publication TypeConference Paper
Year of Publication2021
AuthorsAbdel-Fattah, Farhan, AlTamimi, Fadel, Farhan, Khalid A.
Conference Name2021 International Conference on Information Technology (ICIT)
Keywordsad hoc network, Classification algorithms, compositionality, Cybersecurty Machine learning, data mining, Intrusion detection, Intrusion Detection Systems, machine learning, machine learning algorithms, MANET, MANET Attack Detection, Metrics, pubcrawl, Resiliency, Support vector machines, Training, Wireless communication
AbstractA wireless technology Mobile Ad hoc Network (MANET) that connects a group of mobile devices such as phones, laptops, and tablets suffers from critical security problems, so the traditional defense mechanism Intrusion Detection System (IDS) techniques are not sufficient to safeguard and protect MANET from malicious actions performed by intruders. Due to the MANET dynamic decentralized structure, distributed architecture, and rapid growing of MANET over years, vulnerable MANET does not need to change its infrastructure rather than using intelligent and advance methods to secure them and prevent intrusions. This paper focuses essentially on machine learning methodologies and algorithms to solve the shortage of the first line defense IDS to overcome the security issues MANET experience. Threads such as black hole, routing loops, network partition, selfishness, sleep deprivation, and denial of service (DoS), may be easily classified and recognized using machine learning methodologies and algorithms. Also, machine learning methodologies and algorithms help find ways to reduce and solve mischievous and harmful attacks against intimidation and prying. The paper describes few machine learning algorithms in detail such as Neural Networks, Support vector machine (SVM) algorithm and K-nearest neighbors, and how these methodologies help MANET to resolve their security problems.
DOI10.1109/ICIT52682.2021.9491749
Citation Keyabdel-fattah_machine_2021