Solving Uncertain MDPs with Objectives that Are Separable over Instantiations of Model Uncertainty

Authors

  • Yossiri Adulyasak Singapore MIT Alliance for Research and Technology (SMART), Massachussets Institute of Technology
  • Pradeep Varakantham Singapore Management University
  • Asrar Ahmed Singapore Management University
  • Patrick Jaillet Massachussets Institute of Technology

DOI:

https://doi.org/10.1609/aaai.v29i1.9695

Keywords:

Markov Decision Problems (MDPs), Lagrangian Dual Decomposition, Bayesian Reinforcement Learning, Robust MDPs

Abstract

Markov Decision Problems, MDPs offer an effective mechanism for planning under uncertainty. However, due to unavoidable uncertainty over models, it is difficult to obtain an exact specification of an MDP. We are interested in solving MDPs, where transition and reward functions are not exactly specified. Existing research has primarily focussed on computing infinite horizon stationary policies when optimizing robustness, regret and percentile based objectives. We focus specifically on finite horizon problems with a special emphasis on objectives that are separable over individual instantiations of model uncertainty (i.e., objectives that can be expressed as a sum over instantiations of model uncertainty): (a) First, we identify two separable objectives for uncertain MDPs: Average Value Maximization (AVM) and Confidence Probability Maximisation (CPM). (b) Second, we provide optimization based solutions to compute policies for uncertain MDPs with such objectives. In particular, we exploit the separability of AVM and CPM objectives by employing Lagrangian dual decomposition(LDD). (c) Finally, we demonstrate the utility of the LDD approach on a benchmark problem from the literature.

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Published

2015-03-04

How to Cite

Adulyasak, Y., Varakantham, P., Ahmed, A., & Jaillet, P. (2015). Solving Uncertain MDPs with Objectives that Are Separable over Instantiations of Model Uncertainty. Proceedings of the AAAI Conference on Artificial Intelligence, 29(1). https://doi.org/10.1609/aaai.v29i1.9695

Issue

Section

AAAI Technical Track: Reasoning under Uncertainty