OCLGSep 21, 2022

On the convex formulations of robust Markov decision processes

arXiv:2209.10187v213 citationsh-index: 22
Originality Incremental advance
AI Analysis

This provides a new theoretical foundation for solving RMDPs in uncertain environments, though it is incremental as it builds on existing MDP frameworks.

The paper tackles the lack of a convex optimization formulation for robust Markov decision processes (RMDPs) under standard assumptions, and derives the first such formulation using entropic regularization and exponential change of variables, with polynomial complexity in states and actions.

Robust Markov decision processes (MDPs) are used for applications of dynamic optimization in uncertain environments and have been studied extensively. Many of the main properties and algorithms of MDPs, such as value iteration and policy iteration, extend directly to RMDPs. Surprisingly, there is no known analog of the MDP convex optimization formulation for solving RMDPs. This work describes the first convex optimization formulation of RMDPs under the classical sa-rectangularity and s-rectangularity assumptions. By using entropic regularization and exponential change of variables, we derive a convex formulation with a number of variables and constraints polynomial in the number of states and actions, but with large coefficients in the constraints. We further simplify the formulation for RMDPs with polyhedral, ellipsoidal, or entropy-based uncertainty sets, showing that, in these cases, RMDPs can be reformulated as conic programs based on exponential cones, quadratic cones, and non-negative orthants. Our work opens a new research direction for RMDPs and can serve as a first step toward obtaining a tractable convex formulation of RMDPs.

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