Proposes an adaptive quantile schedule in Bayesian risk MDPs for online RL that starts robust and gradually encourages exploration, supported by asymptotic normality characterization and sublinear Bayesian regret bounds.
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Evolving Robustness--Exploration Trade-off in Online Reinforcement Learning via Quantile Bayesian Risk MDPs
Proposes an adaptive quantile schedule in Bayesian risk MDPs for online RL that starts robust and gradually encourages exploration, supported by asymptotic normality characterization and sublinear Bayesian regret bounds.