A novel Q-learning algorithm with function approximation for constrained Markov decision processes


Autoria(s): Lakshmanan, K; Bhatnagar, Shalabh
Data(s)

2012

Resumo

We present a novel multi-timescale Q-learning algorithm for average cost control in a Markov decision process subject to multiple inequality constraints. We formulate a relaxed version of this problem through the Lagrange multiplier method. Our algorithm is different from Q-learning in that it updates two parameters - a Q-value parameter and a policy parameter. The Q-value parameter is updated on a slower time scale as compared to the policy parameter. Whereas Q-learning with function approximation can diverge in some cases, our algorithm is seen to be convergent as a result of the aforementioned timescale separation. We show the results of experiments on a problem of constrained routing in a multistage queueing network. Our algorithm is seen to exhibit good performance and the various inequality constraints are seen to be satisfied upon convergence of the algorithm.

Formato

application/pdf

Identificador

http://eprints.iisc.ernet.in/46678/1/Ann_All_Con_Com_Con_Com_400_2012.pdf

Lakshmanan, K and Bhatnagar, Shalabh (2012) A novel Q-learning algorithm with function approximation for constrained Markov decision processes. In: 2012 50th Annual Allerton Conference on Communication, Control, and Computing (Allerton), 1-5 Oct. 2012 , Monticello, IL, USA.

Publicador

IEEE

Relação

http://dx.doi.org/10.1109/Allerton.2012.6483246

http://eprints.iisc.ernet.in/46678/

Palavras-Chave #Computer Science & Automation (Formerly, School of Automation)
Tipo

Conference Paper

PeerReviewed