Title :
Optimization of Instance-based Policy Based on Real-coded Genetic Algorithms
Author :
Miyamae, Atsushi ; Sakuma, Jun ; Ono, Isao ; Kobayashi, Shigenobu
Author_Institution :
Tokyo Inst. of Technol., Yokohama
Abstract :
Reinforcement learning is a useful tool for complex control problems that cannot be modeled mathematically nor solved theoretically. Direct policy search(DPS) is an approach for reinforcement learning that represents a policy using some model and searches an optimal parameter directly by optimization techniques such as genetic algorithms(GA). Instance-based policy is a policy representation model of DPS. It represents a policy using a set of instances that are pairs of state and action. In this paper, we presents a real-coded GA to optimize efficiently a set of instances with continuous state and continuous action, given an episodic task. The proposed method named FLIP(Functional Learner for Instance-based Policy) was applied to a space robot and a car-like robot. The results of experiments show effectiveness and usefulness of FLIP.
Keywords :
genetic algorithms; learning (artificial intelligence); search problems; FLIP; direct policy search; functional learner for instance-based policy; optimization; real-coded genetic algorithms; reinforcement learning; Computational complexity; Computer applications; Computer industry; Concrete; Genetic algorithms; Industrial control; Learning; Mathematical model; Orbital robotics; State-space methods;
Conference_Titel :
Soft Computing in Industrial Applications, 2008. SMCia '08. IEEE Conference on
Conference_Location :
Muroran
Print_ISBN :
978-1-4244-3782-5
Electronic_ISBN :
978-4-9904-2590-6
DOI :
10.1109/SMCIA.2008.5045986