Computer game-playing programs based on deep reinforcement learning have surpassed the performance of even the best human players. However, the huge analysis space of such neural networks and their numerous parameters require extensive computing power. Hence, in this study, we aimed to increase the network learning efficiency by modifying the neural network structure, which should reduce the number of learning iterations and the required computing power. A convolutional neural network with a maximum-average-out (MAO) unit structure based on piecewise function thinking is proposed, through which features can be effectively learned and the expression ability of hidden layer features can be enhanced. To verify the performance of the MAO struct...
Go is a difficult game for computers to master, and the best go programs are still weaker than the a...
Deep neural networks have been successfully applied in learning the board games Go, chess, and shogi...
Deep learning for the game of Go recently had a tremendous success with the victory of AlphaGo again...
Mastering the game of Go has remained a long-standing challenge to the field of AI. Modern computer ...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Reinforcement learning is applied to computer-based playing of 5x5 Go. We have found that incorporat...
The game of Go is more challenging than other board games, due to the difficulty of constructing a p...
Project (M.S., Computer Science) -- California State University, Sacramento, 2013.Games are an inter...
The game of go is an ideal problem domain for exploring machine learning: it is easy to define and t...
The purpose of this paper is to introduce the use of convolutional neural network for prediction of ...
This thesis investigates how general the knowledge stored in deep-Q-networks are. This general knowl...
This thesis investigates how general the knowledge stored in deep-Q-networks are. This general knowl...
Deep neural networks have been successfully applied in learning the board games Go, chess, and shogi...
Go is a difficult game for computers to master, and the best go programs are still weaker than the a...
Deep neural networks have been successfully applied in learning the board games Go, chess, and shogi...
Deep learning for the game of Go recently had a tremendous success with the victory of AlphaGo again...
Mastering the game of Go has remained a long-standing challenge to the field of AI. Modern computer ...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Using deep neural networks for reinforcement learning has proven very successful, as demonstrated by...
Reinforcement learning is applied to computer-based playing of 5x5 Go. We have found that incorporat...
The game of Go is more challenging than other board games, due to the difficulty of constructing a p...
Project (M.S., Computer Science) -- California State University, Sacramento, 2013.Games are an inter...
The game of go is an ideal problem domain for exploring machine learning: it is easy to define and t...
The purpose of this paper is to introduce the use of convolutional neural network for prediction of ...
This thesis investigates how general the knowledge stored in deep-Q-networks are. This general knowl...
This thesis investigates how general the knowledge stored in deep-Q-networks are. This general knowl...
Deep neural networks have been successfully applied in learning the board games Go, chess, and shogi...
Go is a difficult game for computers to master, and the best go programs are still weaker than the a...
Deep neural networks have been successfully applied in learning the board games Go, chess, and shogi...
Deep learning for the game of Go recently had a tremendous success with the victory of AlphaGo again...