This paper describes a methodology for quickly learning to play games at a strong level. The methodology consists of a novel combination of three techniques, and a variety of experiments on the game of Othello demonstrates their usefulness. First, structures or topologies in neural network connectivity patterns are used to decrease the number of learning parameters and to deal more effectively with the structural credit assignment problem, which is to change individual network weights based on the obtained feedback. Furthermore, the structured neural networks are trained with the novel neural-fitted temporal difference (TD) learning algorithm to create a system that can exploit most of the training experiences and enhance learning speed and...
In this thesis, neural-fitted temporal difference learning, a form of reinforcement learning, is use...
© Springer-Verlag Berlin Heidelberg 2001. The strength of a game-playing program is mainly based on ...
The success of neural networks and temporal dif-ference methods in complex tasks such as in (Tesauro...
This paper describes a methodology for quickly learning to play games at a strong level. The methodo...
Many different approaches to game playing have been suggested including alpha-beta search, temporal ...
NeuroDraughts is a draughts playing program similar in approach to NeuroGammon and NeuroChess [Tesau...
Over the past two decades, Reinforcement Learning has emerged as a promising Machine Learning techni...
Reinforcement learning is applied to computer-based playing of 5x5 Go. We have found that incorporat...
AbstractGame playing is a game method that require an AI (Artificial Intelligence), so that an AI ca...
The goal of this project was to apply unsupervised machine learning algorithms to the board game oth...
Abstract—This study investigates different methods of learning to play the game of Othello. The main...
When reinforcement learning is applied to large state spaces, such as those occurring in playing boa...
In this paper we present TDLeaf(), a variation on the TD() algorithm that enables it to be used in c...
When reinforcement learning is applied to large state spaces, such as those occurring in playing boa...
The thesis is dedicated to the study and implementation of methods used for learning from the course...
In this thesis, neural-fitted temporal difference learning, a form of reinforcement learning, is use...
© Springer-Verlag Berlin Heidelberg 2001. The strength of a game-playing program is mainly based on ...
The success of neural networks and temporal dif-ference methods in complex tasks such as in (Tesauro...
This paper describes a methodology for quickly learning to play games at a strong level. The methodo...
Many different approaches to game playing have been suggested including alpha-beta search, temporal ...
NeuroDraughts is a draughts playing program similar in approach to NeuroGammon and NeuroChess [Tesau...
Over the past two decades, Reinforcement Learning has emerged as a promising Machine Learning techni...
Reinforcement learning is applied to computer-based playing of 5x5 Go. We have found that incorporat...
AbstractGame playing is a game method that require an AI (Artificial Intelligence), so that an AI ca...
The goal of this project was to apply unsupervised machine learning algorithms to the board game oth...
Abstract—This study investigates different methods of learning to play the game of Othello. The main...
When reinforcement learning is applied to large state spaces, such as those occurring in playing boa...
In this paper we present TDLeaf(), a variation on the TD() algorithm that enables it to be used in c...
When reinforcement learning is applied to large state spaces, such as those occurring in playing boa...
The thesis is dedicated to the study and implementation of methods used for learning from the course...
In this thesis, neural-fitted temporal difference learning, a form of reinforcement learning, is use...
© Springer-Verlag Berlin Heidelberg 2001. The strength of a game-playing program is mainly based on ...
The success of neural networks and temporal dif-ference methods in complex tasks such as in (Tesauro...