Title :
Multi-task reinforcement learning with associative memory models considering the multiple distributions of MDPs
Author :
Kinbara Fumihiro;Shohei Kato;Munehiro Nakamura
Author_Institution :
Dept. of Computer Science and Engineering, Graduate School of Engineering, Nagoya Institute of Technology, Gokiso-cho, Showa-ku, Nagoya 466-8555, Japan
Abstract :
Multi-task reinforcement learning is one of the promising approaches in reinforcement learning problems. While the formulation of the multi-task reinforcement learning problem have been established in a previous study, only a single distribution of the tasks has been considered. However, we assume that the formulation can hardly be applied to real-world problems. This paper presents a method of expanding the formulation to a more general problem by considering multiple distributions of tasks. In addition, we propose an agent model with associative memory models, then apply it to an expanded multi-task reinforcement learning problem.
Keywords :
"Learning (artificial intelligence)","Associative memory","Switches","Conferences","Consumer electronics","Computational modeling","Computer science"
Conference_Titel :
Consumer Electronics (GCCE), 2015 IEEE 4th Global Conference on
DOI :
10.1109/GCCE.2015.7398723