English

Regular Decision Processes for Grid Worlds

Artificial Intelligence 2021-11-10 v2

Abstract

Markov decision processes are typically used for sequential decision making under uncertainty. For many aspects however, ranging from constrained or safe specifications to various kinds of temporal (non-Markovian) dependencies in task and reward structures, extensions are needed. To that end, in recent years interest has grown into combinations of reinforcement learning and temporal logic, that is, combinations of flexible behavior learning methods with robust verification and guarantees. In this paper we describe an experimental investigation of the recently introduced regular decision processes that support both non-Markovian reward functions as well as transition functions. In particular, we provide a tool chain for regular decision processes, algorithmic extensions relating to online, incremental learning, an empirical evaluation of model-free and model-based solution algorithms, and applications in regular, but non-Markovian, grid worlds.

Keywords

Cite

@article{arxiv.2111.03647,
  title  = {Regular Decision Processes for Grid Worlds},
  author = {Nicky Lenaers and Martijn van Otterlo},
  journal= {arXiv preprint arXiv:2111.03647},
  year   = {2021}
}

Comments

21 pages, 10 figures, accepted for oral presentation at the AI & ML conference for Belgium, Netherlands & Luxemburg (BNAIC/BeneLearn 2021), 10-12 November, Luxembourg

R2 v1 2026-06-24T07:28:13.280Z