Planning with Information-Processing Constraints and Model Uncertainty in Markov Decision Processes
Abstract
Information-theoretic principles for learning and acting have been proposed to solve particular classes of Markov Decision Problems. Mathematically, such approaches are governed by a variational free energy principle and allow solving MDP planning problems with information-processing constraints expressed in terms of a Kullback-Leibler divergence with respect to a reference distribution. Here we consider a generalization of such MDP planners by taking model uncertainty into account. As model uncertainty can also be formalized as an information-processing constraint, we can derive a unified solution from a single generalized variational principle. We provide a generalized value iteration scheme together with a convergence proof. As limit cases, this generalized scheme includes standard value iteration with a known model, Bayesian MDP planning, and robust planning. We demonstrate the benefits of this approach in a grid world simulation.
Cite
@article{arxiv.1604.02080,
title = {Planning with Information-Processing Constraints and Model Uncertainty in Markov Decision Processes},
author = {Jordi Grau-Moya and Felix Leibfried and Tim Genewein and Daniel A. Braun},
journal= {arXiv preprint arXiv:1604.02080},
year = {2016}
}
Comments
16 pages, 3 figures