Botnet Attack Detection with Incremental Online Learning

TytułBotnet Attack Detection with Incremental Online Learning
Publication TypeConference Paper
Rok publikacji2022
AutorzyNakip M, Gelenbe E
Conference NameEuroCybersec 2021
PublisherSpringer
Conference LocationNice, France
Słowa kluczoweAuto associative neural networks, Botnet attacks, Dense random neural networks, Incremental learning, Internet of Things (IoT), Mirai
Abstract

In recent years, IoT devices have often been the target of Mirai Botnet attacks. This paper develops an intrusion detection method based on Auto-Associated Dense Random Neural Network with incremental online learning, targeting the detection of Mirai Botnet attacks. The proposed method is trained only on benign IoT traffic while the IoT network is online; therefore, it does not require any data collection on benign or attack traffic. Experimental results on a publicly available dataset have shown that the performance of this method is considerably high and very close to that of the same neural network model with offline training. In addition, both the training and execution times of the proposed method are highly acceptable for real-time attack detection.

DOI10.1007/978-3-031-09357-9_5

Historia zmian

Data aktualizacji: 19/10/2022 - 13:40; autor zmian: Mert Nakip (mnakip@iitis.pl)