A Theory of Regularized Markov Decision Processes
Geist, Matthieu, Scherrer, Bruno, Pietquin, Olivier
Many recent successful (deep) reinforcement learning algorithms make use of regularization, generally based on entropy or on Kullback-Leibler divergence. We propose a general theory of regularized Markov Decision Processes that generalizes these approaches in two directions: we consider a larger class of regularizers, and we consider the general modified policy iteration approach, encompassing both policy iteration and value iteration. The core building blocks of this theory are a notion of regularized Bellman operator and the Legendre-Fenchel transform, a classical tool of convex optimization. This approach allows for error propagation analyses of general algorithmic schemes of which (possibly variants of) classical algorithms such as Trust Region Policy Optimization, Soft Q-learning, Stochastic Actor Critic or Dynamic Policy Programming are special cases. This also draws connections to proximal convex optimization, especially to Mirror Descent.
Jan-31-2019
- Country:
- Europe > France
- Île-de-France > Paris
- Paris (0.04)
- Grand Est > Meurthe-et-Moselle
- Nancy (0.04)
- Île-de-France > Paris
- Asia > Middle East
- Jordan (0.04)
- Europe > France
- Genre:
- Research Report > New Finding (0.46)