PhiBE-Q-Learning: Bridging Off-Policy Reinforcement Learning and Continuous-Time Control
Abstract
In this paper, we develop an off-policy method for continuous-time reinforcement learning (CTRL), where the system dynamics are governed by an unknown stochastic differential equation (SDE) and only discrete-time trajectory data are available. A central challenge is that the classical state-action value function Q(s,a), which enables off-policy learning in discrete-time RL, does not exist in CTRL (Baird, 1994; Jia and Zhou, 2023; Tallec et al., 2019). On the other hand, continuous-time control provides local notions such as the instantaneous advantage function q(s,a), but these typically rely on state value function V(s). To address this, we introduce a new definition of the state-action value function in CTRL and derive its governing equation. Building on the PhiBE approximation (Zhu, 2024; Zhu et al., 2025), we propose iterative algorithms to approximate the optimal Q-function in both model-based and model-free settings using only discrete-time off-policy data. Under linear function approximation, we establish convergence guarantees and derive explicit convergence rates for the proposed method.
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