Diferencia entre revisiones de «D-RR-QL»

De Grupo de Inteligencia Computacional (GIC)
Sin resumen de edición
Sin resumen de edición
Línea 6: Línea 6:
:Borja Fernandez-Gauna, Ismael Etxeberria-Agiriano and Manuel Graña
:Borja Fernandez-Gauna, Ismael Etxeberria-Agiriano and Manuel Graña
:Plos-One
:Plos-One
[[media:D-RR-QL_hose-transportation-experiments.zip|D-RR-QL source code]]

Revisión del 19:01 24 oct 2014

Distributed Round-Robin Q-Learning (D-RR-QL) is a Reinforcement Learning algorithm that allows to approximate the optimal joint-policy of a multi-agent system in a two-step fashion. First, each agent learns in its own local state-action following a round-robin schedule, thus avoiding non-stationarity due to the rest of agents learning their own policies. Then a coordination procedure approximates the optimal joint-policy by a greedy selection procedure using message passing.

The main advantage of D-RR-QL is that it allows each agent to use Modular State-Action Vetoes, which is a technique that allows RL agents to boost their exploration efficiency when approaching over-constrained systems, such as Linked Multicomponent Robotic Systems. The following source-code was used in the experiments of the following paper:

"Learning Multirobot Hose Transportation and Deployment by Round-Robin Distributed Q-Learning"
Borja Fernandez-Gauna, Ismael Etxeberria-Agiriano and Manuel Graña
Plos-One

D-RR-QL source code