DocumentCode
3269456
Title
Optimistic planning for belief-augmented Markov Decision Processes
Author
Fonteneau, Raphael ; Busoniu, L. ; Munos, Remi
Author_Institution
Dept. of Electr. Eng. & Comput. Sci., Univ. of Liege, Liege, Belgium
fYear
2013
fDate
16-19 April 2013
Firstpage
77
Lastpage
84
Abstract
This paper presents the Bayesian Optimistic Planning (BOP) algorithm, a novel model-based Bayesian reinforcement learning approach. BOP extends the planning approach of the Optimistic Planning for Markov Decision Processes (OP-MDP) algorithm [10], [9] to contexts where the transition model of the MDP is initially unknown and progressively learned through interactions within the environment. The knowledge about the unknown MDP is represented with a probability distribution over all possible transition models using Dirichlet distributions, and the BOP algorithm plans in the belief-augmented state space constructed by concatenating the original state vector with the current posterior distribution over transition models. We show that BOP becomes Bayesian optimal when the budget parameter increases to infinity. Preliminary empirical validations show promising performance.
Keywords
Markov processes; belief networks; learning (artificial intelligence); planning (artificial intelligence); probability; BOP algorithm; Bayesian optimistic planning algorithm; Dirichlet distributions; OP-MDP; belief-augmented Markov decision processes; novel model-based Bayesian reinforcement learning approach; optimistic planning for Markov decision processes; probability distribution; Algorithm design and analysis; Bayes methods; Context; Context modeling; Dynamic programming; Learning (artificial intelligence); Planning;
fLanguage
English
Publisher
ieee
Conference_Titel
Adaptive Dynamic Programming And Reinforcement Learning (ADPRL), 2013 IEEE Symposium on
Conference_Location
Singapore
ISSN
2325-1824
Type
conf
DOI
10.1109/ADPRL.2013.6614992
Filename
6614992
Link To Document