English

Solving Multi-Objective MDP with Lexicographic Preference: An application to stochastic planning with multiple quantile objective

Artificial Intelligence 2017-05-11 v1

Abstract

In most common settings of Markov Decision Process (MDP), an agent evaluate a policy based on expectation of (discounted) sum of rewards. However in many applications this criterion might not be suitable from two perspective: first, in risk aversion situation expectation of accumulated rewards is not robust enough, this is the case when distribution of accumulated reward is heavily skewed; another issue is that many applications naturally take several objective into consideration when evaluating a policy, for instance in autonomous driving an agent needs to balance speed and safety when choosing appropriate decision. In this paper, we consider evaluating a policy based on a sequence of quantiles it induces on a set of target states, our idea is to reformulate the original problem into a multi-objective MDP problem with lexicographic preference naturally defined. For computation of finding an optimal policy, we proposed an algorithm \textbf{FLMDP} that could solve general multi-objective MDP with lexicographic reward preference.

Keywords

Cite

@article{arxiv.1705.03597,
  title  = {Solving Multi-Objective MDP with Lexicographic Preference: An application to stochastic planning with multiple quantile objective},
  author = {Yan Li and Zhaohan Sun},
  journal= {arXiv preprint arXiv:1705.03597},
  year   = {2017}
}
R2 v1 2026-06-22T19:42:33.042Z