Abstract

Intrusion detection systems (IDSs) play a pivotal role in safeguarding networks and systems against malicious activities. However, the challenge of imbalanced datasets significantly impacts IDS research, skewing learning models towards the majority class and diminishing accuracy for the minority class. This study introduces the Reinforcement Learning (RL) Framework with Oversampling and Undersampling Algorithm (RLFOUA) to address imbalanced datasets. RLFOUA combines RL with diverse resampling algorithms, creating an adaptive learning environment. It integrates the novel True False Rate Synthetic Minority Oversampling Technique (TFRSMOTE) algorithm, emphasizing data-level approaches. Additionally, RLFOUA employs a cost-sensitive approach based on classification metrics. Using the CSE-CIC-IDS2018 and NSL-KDD datasets, RLFOUA demonstrates substantial improvement over existing resampling techniques. Achieving an accuracy of 0.9981 for NSL-KDD and 0.9846 for CSE-CIC-IDS2018, the framework’s performance is evaluated using F1 score, accuracy, precision, recall, and a proposed Index Metric (IM). RLFOUA presents a significant advancement in addressing class imbalance challenges in IDS. It shows an average accuracy improvement of 21.5% compared to the recent resampling technique AESMOTE on the NSL-KDD dataset.

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