Policy Gradient Methods for Reinforcement Learning with Function Approximation

Richard S. Sutton(AT&T (United States)), David McAllester(AT&T (United States)), Satinder Singh(AT&T (United States)), Yishay Mansour(AT&T (United States))
Unknown
November 29, 1999
Cited by 4,964

Abstract

Function approximation is essential to reinforcement learning, but the standard approach of approximating a value function and determining a policy from it has so far proven theoretically intractable. In this paper we explore an alternative approach in which the policy is explicitly represented by its own function approximator, independent of the value function, and is updated according to the gradient of expected reward with respect to the policy parameters. Williams's REINFORCE method and actor--critic methods are examples of this approach. Our main new result is to show that the gradient can be written in a form suitable for estimation from experience aided by an approximate action-value or advantage function. Using this result, we prove for the first time that a version of policy iteration with arbitrary di#erentiable function approximation is convergent to a locally optimal policy. Large applications of reinforcement learning (RL) require the use of generalizing function approxima...


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