IoT Botnet Detection Using Random Forest and Behavioral Analysis
摘要
Out Of the various detection mechanisms for IoT botnet attacks, one of the most important is the result of possible threats to the security and function of interconnected devices. Such research aims to develop a hybrid solution that blends supervisor learning algorithms with behavior analysis to detect and take action against botnet activities. An algorithmic solution based on the reinforcement idea is shown that employs behavioral nature and smart learning to figure out botnet functionality. The presented method relies on the adaptive ensemble learning algorithm which is able to dynamically decide which features are the most relevant by analyzing the characteristic traffic patterns, thus to identify an anomaly in real-time.Mostly, the operation of our method differs in that its capability of feature engineering is more advanced, therefore, it performs better in the detection of zero-day attacks. The practical application of machine learning techniques in real-time monitoring will no doubt improve the accuracy of detection and the system’s adaptability to dissimilar threats. The method is a scalable and accurate approach to secure IoT environments as well as a technique to contribute to increased resilience in diversified applications and a secure operation guarantee for them. The approach presents itself as a scalable and efficient means of protecting IoT environments while also contributing toward increased resilience to cyber-attacks across diverse applications and ensuring their secure operation.