TabQL is a reinforcement learning framework that substitutes a tabular foundation model with in-context capabilities for the parametric Q-network in DQN, with a warm-up phase and theoretical analysis claiming improved sample efficiency.
Bellman operator convergence enhancements in reinforcement learning algorithms
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Introduces two carbon-aware DRL-based intrusion detection systems for IoT edge gateways, reporting 94% accuracy for a supervised LSTM-DRL model and 98% for a label-free Autoencoder-DRL hybrid.
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TabQL: In-Context Q-Learning with Tabular Foundation Models
TabQL is a reinforcement learning framework that substitutes a tabular foundation model with in-context capabilities for the parametric Q-network in DQN, with a warm-up phase and theoretical analysis claiming improved sample efficiency.
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Carbon-Aware Intrusion Detection: A Comparative Study of Supervised and Unsupervised DRL for Sustainable IoT Edge Gateways
Introduces two carbon-aware DRL-based intrusion detection systems for IoT edge gateways, reporting 94% accuracy for a supervised LSTM-DRL model and 98% for a label-free Autoencoder-DRL hybrid.