A novel log-barrier and log-determinant regularized algorithm achieves Õ(√T) regret in tabular MDPs with O(H log log T) oracle calls independent of |S|×|A| and extends to linear MDPs with infinite states for sublinear regret.
How Log-Barrier Helps Exploration in Policy Optimization
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abstract
Recently, it has been shown that the Stochastic Gradient Bandit (SGB) algorithm converges to a globally optimal policy with a constant learning rate. However, these guarantees rely on unrealistic assumptions about the learning process, namely that the probability of the optimal action is always bounded away from zero. We attribute this to the lack of an explicit exploration mechanism in SGB. To address these limitations, we propose to regularize the SGB objective with a log-barrier on the parametric policy, structurally enforcing a minimal amount of exploration. We prove that Log-Barrier Stochastic Gradient Bandit (LB-SGB) matches the sample complexity of SGB, but also converges (at a slower rate) without any assumptions on the learning process. We also show a connection between the log-barrier regularization and Natural Policy Gradient, as both exploit the geometry of the policy space by controlling the Fisher information. We validate our theoretical findings through numerical simulations, showing the benefits of the log-barrier regularization.
fields
cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Model-Based Reinforcement Learning with Double Oracle Efficiency in Policy Optimization and Offline Estimation
A novel log-barrier and log-determinant regularized algorithm achieves Õ(√T) regret in tabular MDPs with O(H log log T) oracle calls independent of |S|×|A| and extends to linear MDPs with infinite states for sublinear regret.