Title
An Extended Q Learning System with Emotion State to Make Up an Agent with Individuality.
Abstract
Recently, researches for the intelligent robots incorporating knowledge of neuroscience have been actively carried out. In particular, a lot of researchers making use of reinforcement learning have been seen, especially, \"Reinforcement learning methods with emotions\", that has already proposed so far, is very attractive method because it made us possible to achieve the complicated object, which could not be achieved by the conventional reinforcement learning method, taking into account of emotions. In this paper, we propose an extended reinforcement (Q) learning system with amygdala (emotion) models to make up individual emotions for each agent. In addition, through computer simulations that the proposed method is applied to the goal search problem including a variety of distinctive solutions, it finds that each agent is able to have each individual solution.
Year
DOI
Venue
2015
10.5220/0005616500700078
IJCCI (NCTA)
Keywords
Field
DocType
Reinforcement Learning,Amygdala,Emotional Model,Q Learning,Individuality
Computer science,Q-learning,Intelligent robots,Artificial intelligence,Search problem,Error-driven learning,Reinforcement,Reinforcement learning
Conference
Volume
ISBN
Citations 
3
978-1-5090-1968-7
0
PageRank 
References 
Authors
0.34
4
5
Name
Order
Citations
PageRank
Masanao Obayashi119826.10
Shunsuke Uto200.68
Takashi Kuremoto319627.73
Shingo Mabu449377.00
Kunikazu Kobayashi517321.96