Publication details

Learning-Based Mean-Payoff Optimization in an Unknown MDP under Omega-Regular Constraints

Investor logo
Authors

KŘETÍNSKÝ Jan PEREZ Guillermo RASKIN Jean-Francois

Year of publication 2018
Type Article in Proceedings
Conference 29th International Conference on Concurrency Theory (CONCUR 2018)
MU Faculty or unit

Faculty of Informatics

Citation
Doi http://dx.doi.org/10.4230/LIPIcs.CONCUR.2018.8
Keywords Learning; Mean-Payoff; Markov decision process; Omega-Regular Specification
Description We formalize the problem of maximizing the mean-payoff value with high probability while satisfying a parity objective in a Markov decision process (MDP) with unknown probabilistic transition function and unknown reward function. Assuming the support of the unknown transition function and a lower bound on the minimal transition probability are known in advance, we show that in MDPs consisting of a single end component, two combinations of guarantees on the parity and mean-payoff objectives can be achieved depending on how much memory one is willing to use. (i) For all epsilon and gamma we can construct an online-learning finite-memory strategy that almost-surely satisfies the parity objective and which achieves an epsilon-optimal mean payoff with probability at least 1 - gamma. (ii) Alternatively, for all epsilon and gamma there exists an online-learning infinite-memory strategy that satisfies the parity objective surely and which achieves an epsilon-optimal mean payoff with probability at least 1 - gamma. We extend the above results to MDPs consisting of more than one end component in a natural way. Finally, we show that the aforementioned guarantees are tight, i.e. there are MDPs for which stronger combinations of the guarantees cannot be ensured.
Related projects:

You are running an old browser version. We recommend updating your browser to its latest version.

More info