Metrics for Finite Markov Decision Processes
Ferns, Norman, Panangaden, Prakash, Precup, Doina
–arXiv.org Artificial Intelligence
The formulation of our metrics is based on the notion of bisimulation for MDPs, with an aim towards solving discounted infinite horizon reinforcement learning tasks. Such metrics can be used to aggregate states, as well as to better structure other value function approximators (e.g., memory-based or nearest-neighbor approximators). We provide bounds that relate our metric distances to the optimal values of states in the given MDP.
arXiv.org Artificial Intelligence
Jul-11-2012