To date there have been few implementation of Holland’s Learning Classifier System (LCS) on real robots. The paper introduces a Temporal Classifier System (TCS), an LCS derived from Wilson’s ZCS. Traditional LCS have the ability to generalise over the state action-space of a reinforcement learning problem using evolutionary techniques. In TCS this generalisation ability can also be used to determine the state divisions in the state space considered by the LCS. TCS also implements components from Semi-Mark-Decision Process (SMDP) theory to weight the influence of time on the reward functions of the LCS. A simple light-seeking task on a real robot platform using TCS is presented which demonstrates desirable adaptive characteristics for the us...
Robotic system is an important area in artificial intelligence that aims at developing the performan...
research.nii.ac.jp/~seiji/ We have proposed a fast learning method that enables a mobile robot to ac...
Abstract—Two methods for behavior recognition are pre-sented and evaluated. Both methods are based o...
To date there have been few implementation of Holland’s Learning Classifier System (LCS) on real rob...
To date there has only been one implementation of Holland's Learning Classifier System (LCS) on real...
Although most learning classifier system (LCS) research uses the accuracy-based XCS, it had never be...
In many cases, a real robot application requires the navigation in dynamic environments. The navigat...
AbstractIn this paper a revised reinforcement learning method is presented for stability control pro...
Abstract: In many cases, a real robot application requires the navigation in dynamic environments. T...
The navigation problem involves how to reach a goal avoiding obstacles in dynamic environments. This...
Abstract: In many cases, a real robot application requires the navigation in dynamic environments. T...
Learning Classifier Systems (LCS) are population-based reinforcement learners used in a wide variety...
Learning classifier systems (LCS) are population-based reinforcement learners that were originally d...
The convergence property of reinforcement learning has been extensively investigated in the field of...
Abstract: The navigation problem involves how to reach a goal avoiding obstacles in dynamic environm...
Robotic system is an important area in artificial intelligence that aims at developing the performan...
research.nii.ac.jp/~seiji/ We have proposed a fast learning method that enables a mobile robot to ac...
Abstract—Two methods for behavior recognition are pre-sented and evaluated. Both methods are based o...
To date there have been few implementation of Holland’s Learning Classifier System (LCS) on real rob...
To date there has only been one implementation of Holland's Learning Classifier System (LCS) on real...
Although most learning classifier system (LCS) research uses the accuracy-based XCS, it had never be...
In many cases, a real robot application requires the navigation in dynamic environments. The navigat...
AbstractIn this paper a revised reinforcement learning method is presented for stability control pro...
Abstract: In many cases, a real robot application requires the navigation in dynamic environments. T...
The navigation problem involves how to reach a goal avoiding obstacles in dynamic environments. This...
Abstract: In many cases, a real robot application requires the navigation in dynamic environments. T...
Learning Classifier Systems (LCS) are population-based reinforcement learners used in a wide variety...
Learning classifier systems (LCS) are population-based reinforcement learners that were originally d...
The convergence property of reinforcement learning has been extensively investigated in the field of...
Abstract: The navigation problem involves how to reach a goal avoiding obstacles in dynamic environm...
Robotic system is an important area in artificial intelligence that aims at developing the performan...
research.nii.ac.jp/~seiji/ We have proposed a fast learning method that enables a mobile robot to ac...
Abstract—Two methods for behavior recognition are pre-sented and evaluated. Both methods are based o...