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Maximum Entropy Reinforcement Learning with Mixture Policies

2021-03-18 11:23:39
Nir Baram, Guy Tennenholtz, Shie Mannor

Abstract

Mixture models are an expressive hypothesis class that can approximate a rich set of policies. However, using mixture policies in the Maximum Entropy (MaxEnt) framework is not straightforward. The entropy of a mixture model is not equal to the sum of its components, nor does it have a closed-form expression in most cases. Using such policies in MaxEnt algorithms, therefore, requires constructing a tractable approximation of the mixture entropy. In this paper, we derive a simple, low-variance mixture-entropy estimator. We show that it is closely related to the sum of marginal entropies. Equipped with our entropy estimator, we derive an algorithmic variant of Soft Actor-Critic (SAC) to the mixture policy case and evaluate it on a series of continuous control tasks.

Abstract (translated)

URL

https://arxiv.org/abs/2103.10176

PDF

https://arxiv.org/pdf/2103.10176.pdf


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