AbstractA new paradigm for search, based on Monte-Carlo simulation, has revolutionised the performance of computer Go programs. In this article we describe two extensions to the Monte-Carlo tree search algorithm, which significantly improve the effectiveness of the basic algorithm. When we applied these two extensions to the Go program MoGo, it became the first program to achieve dan (master) level in 9×9 Go. In this article we survey the Monte-Carlo revolution in computer Go, outline the key ideas that led to the success of MoGo and subsequent Go programs, and provide for the first time a comprehensive description, in theory and in practice, of this extended framework for Monte-Carlo tree search
Algorithm UCB1 for multi-armed bandit problem has already been extended to Algorithm UCT which works...
International audienceMonte-Carlo evaluation consists in estimating a position by averaging the outc...
Abstract. Monte-Carlo tree search is a powerful paradigm for the game of Go. We present a parallel M...
AbstractA new paradigm for search, based on Monte-Carlo simulation, has revolutionised the performan...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
International audienceThe ancient oriental game of Go has long been considered a grand challenge for...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
University of Minnesota Ph.D. dissertation. May 2016. Major: Computer Science. Advisor: Maria Gini. ...
International audienceWe present a new exploration term, more efficient than clas- sical UCT-like ex...
Monte-Carlo (MC) tree search is a new research field. Its effectiveness in searching large state spa...
Monte-Carlo Tree Search (MCTS) has revolutionized, Computer Go, with programs based on the algorithm...
This thesis is about designing an artificial intelligence Go player based on Monte Carlo Tree Search...
Algorithm UCB1 for multi-armed bandit problem has already been extended to Algorithm UCT which works...
International audienceMonte-Carlo evaluation consists in estimating a position by averaging the outc...
Abstract. Monte-Carlo tree search is a powerful paradigm for the game of Go. We present a parallel M...
AbstractA new paradigm for search, based on Monte-Carlo simulation, has revolutionised the performan...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
International audienceThe ancient oriental game of Go has long been considered a grand challenge for...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
The ancient oriental game of Go has long been considered a grand challenge for artificial intelligen...
University of Minnesota Ph.D. dissertation. May 2016. Major: Computer Science. Advisor: Maria Gini. ...
International audienceWe present a new exploration term, more efficient than clas- sical UCT-like ex...
Monte-Carlo (MC) tree search is a new research field. Its effectiveness in searching large state spa...
Monte-Carlo Tree Search (MCTS) has revolutionized, Computer Go, with programs based on the algorithm...
This thesis is about designing an artificial intelligence Go player based on Monte Carlo Tree Search...
Algorithm UCB1 for multi-armed bandit problem has already been extended to Algorithm UCT which works...
International audienceMonte-Carlo evaluation consists in estimating a position by averaging the outc...
Abstract. Monte-Carlo tree search is a powerful paradigm for the game of Go. We present a parallel M...