Rethinking the Global Convergence of Softmax Policy Gradient with Linear Function Approximation

Abstract

Policy gradient (PG) methods have played an essential role in the empirical successes of reinforcement learning. In order to handle large state-action spaces, PG methods are typically used with function approximation. In this setting, the approximation error in modeling problem-dependent quantities is a key notion for characterizing the global convergence of PG methods. We focus on Softmax PG with linear function approximation (referred to as Lin-SPG) and demonstrate that the approximation error is irrelevant to the algorithm's global convergence even for the stochastic bandit setting. Consequently, we first identify the necessary and sufficient conditions on the feature representation that can guarantee the asymptotic global convergence of Lin-SPG. Under these feature conditions, we prove that T iterations of Lin-SPG with a problem-specific learning rate result in an O(1/T) convergence to the optimal policy. Furthermore, we prove that Lin-SPG with any arbitrary constant learning rate can ensure asymptotic global convergence to the optimal policy.

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