Feb. 8, 2024, 5:42 a.m. | Chen Wang Sarah Erfani Tansu Alpcan Christopher Leckie

cs.LG updates on arXiv.org arxiv.org

Anomaly detection in decision-making sequences is a challenging problem due to the complexity of normality representation learning and the sequential nature of the task. Most existing methods based on Reinforcement Learning (RL) are difficult to implement in the real world due to unrealistic assumptions, such as having access to environment dynamics, reward signals, and online interactions with the environment. To address these limitations, we propose an unsupervised method named Offline Imitation Learning based Anomaly Detection (OIL-AD), which detects anomalies in …

anomaly anomaly detection assumptions complexity cs.ai cs.lg decision detection dynamics environment framework making nature normality oil reinforcement reinforcement learning representation representation learning world

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