Tejapijaya T.Siritanawan P.Sumongkayothin K.Kotani K.Mahidol University2024-04-282024-04-282024-01-01International Conference on Information Systems Security and Privacy Vol.1 (2024) , 358-365https://repository.li.mahidol.ac.th/handle/20.500.14594/98132Botnets are persistent and adaptable cybersecurity threats, displaying diverse behaviors orchestrated by various attacker groups. Their ability to operate stealthily on a massive scale poses challenges to conventional security monitoring systems like Security Information and Event Management (SIEM). In this study, we propose an integrated machine learning method to effectively identify botnet activities under different scenarios. Our approach involves using Shannon entropy for feature extraction, training individual models using random forest, and integrating them in various ways. To evaluate the effectiveness of our methodology, we compare various integrating strategies. The evaluation is conducted using unseen network traffic data, achieving a remarkable reduction in false negatives by our proposed method. The results demonstrate the potential of our integrating method to detect different botnet behaviors, enhancing cybersecurity defense against this notorious threat.Computer ScienceBotnet Detection by Integrating Multiple Machine Learning ModelsConference PaperSCOPUS10.5220/00123177000036482-s2.0-8519084915721844356