Title :
Reinforcement learning algorithms that assimilate and accommodate skills with multiple tasks
Author :
Tommasino, P. ; Caligiore, Daniele ; Mirolli, Marco ; Baldassarre, Gianluca
Author_Institution :
Lab. of Comput. Embodied Neurosci. (LOCEN), ISTC, Rome, Italy
Abstract :
Children are capable of acquiring a large repertoire of motor skills and of efficiently adapting them to novel conditions. In a previous work we proposed a hierarchical modular reinforcement learning model (RANK) that can learn multiple motor skills in continuous action and state spaces. The model is based on a development of the mixture-of-expert model that has been suitably developed to work with reinforcement learning. In particular, the model uses a high-level gating network for assigning responsibilities for acting and for learning to a set of low-level expert networks. The model was also developed with the goal of exploiting the Piagetian mechanisms of assimilation and accommodation to support learning of multiple tasks. This paper proposes a new model (TERL - Transfer Expert Reinforcement Learning) that substantially improves RANK. The key difference with respect to the previous model is the decoupling of the mechanisms that generate the responsibility signals of experts for learning and for control. This made possible to satisfy different constraints for functioning and for learning. We test both the TERL and the RANK models with a two-DOFs dynamic arm engaged in solving multiple reaching tasks, and compare the two with a simple, flat reinforcement learning model. The results show that both models are capable of exploiting assimilation and accommodation processes in order to transfer knowledge between similar tasks, and at the same time to avoid catastrophic interference. Furthermore, the TERL model is shown to significantly outperform the RANK model thanks to its faster and more stable specialization of experts.
Keywords :
learning (artificial intelligence); robots; 2-DOF dynamic arm; TERL; knowledge transfer; multiple motor skills; reinforcement learning algorithms; simulated robot; skill accommodation; skill assimilation; supervised learning problems; transfer expert reinforcement learning; Face; Interference; Joints; Learning; Neural networks; Noise; Robot sensing systems;
Conference_Titel :
Development and Learning and Epigenetic Robotics (ICDL), 2012 IEEE International Conference on
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-4673-4964-2
Electronic_ISBN :
978-1-4673-4963-5
DOI :
10.1109/DevLrn.2012.6400871