Back to Search Start Over

Approximating Euclidean by Imprecise Markov Decision Processes

Authors :
Jaeger, Manfred
Bacci, Giorgio
Bacci, Giovanni
Larsen, Kim Guldstrand
Jensen, Peter Gjøl
Jaeger, Manfred
Bacci, Giorgio
Bacci, Giovanni
Larsen, Kim Guldstrand
Jensen, Peter Gjøl
Publication Year :
2020

Abstract

Euclidean Markov decision processes are a powerful tool for modeling control problems under uncertainty over continuous domains. Finite state imprecise, Markov decision processes can be used to approximate the behavior of these infinite models. In this paper we address two questions: first, we investigate what kind of approximation guarantees are obtained when the Euclidean process is approximated by finite state approximations induced by increasingly fine partitions of the continuous state space. We show that for cost functions over finite time horizons the approximations become arbitrarily precise. Second, we use imprecise Markov decision process approximations as a tool to analyse and validate cost functions and strategies obtained by reinforcement learning. We find that, on the one hand, our new theoretical results validate basic design choices of a previously proposed reinforcement learning approach. On the other hand, the imprecise Markov decision process approximations reveal some inaccuracies in the learned cost functions.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228417150
Document Type :
Electronic Resource