Perfect Information Monte Carlo (PIMC) search is a practical technique for playing imperfect information games that are too large to be optimally solved. Although PIMC search has been criticized in the past for its theoretical deficiencies, in practice it has often produced strong results in a variety of domains. In this paper, we set out to resolve this discrepancy. The contributions of the paper are twofold. First, we use synthetic game trees to identify game properties that result in strong or weak performance for PIMC search as compared to an optimal player. Second, we show how these properties can be detected in real games, and demonstrate that they do indeed appear to be good predictors of the strength of PIMC search. Thus, using...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
Monte-Carlo Tree Search (MCTS) has been applied successfully in many domains, including games. Howev...
Partial information games are excellent examples of decision making un- der uncertainty. In particu...
Perfect Information Monte Carlo (PIMC) search is a practi-cal technique for playing imperfect inform...
AbstractWe examine search algorithms for games with imperfect information. We first investigate Mont...
Artificial intelligence has shown remarkable performance in perfect information games. However, it i...
Abstract. Over the past few years, Monte-Carlo Tree Search (MCTS) has become a popular search techni...
Abstract. Over the past few years, Monte-Carlo Tree Search (MCTS) has become a popular search techni...
The use of the Monte Carlo playouts as an evaluation function has proved to be a viable, general tec...
Monte-Carlo Tree Search (MCTS) has become a popular search technique for playing multi-player games ...
Monte Carlo tree search (MCTS) is an AI technique that has been successfully applied to many determi...
Monte-carlo tree search (mcts) is a best-first search method guided by the results of monte-carlo si...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
In this paper, we put forward Monte-Carlo Tree Search as a novel, unified framework to game AI, whic...
We evaluate the performance of various selection methods for the Monte Carlo Tree Search algorithm i...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
Monte-Carlo Tree Search (MCTS) has been applied successfully in many domains, including games. Howev...
Partial information games are excellent examples of decision making un- der uncertainty. In particu...
Perfect Information Monte Carlo (PIMC) search is a practi-cal technique for playing imperfect inform...
AbstractWe examine search algorithms for games with imperfect information. We first investigate Mont...
Artificial intelligence has shown remarkable performance in perfect information games. However, it i...
Abstract. Over the past few years, Monte-Carlo Tree Search (MCTS) has become a popular search techni...
Abstract. Over the past few years, Monte-Carlo Tree Search (MCTS) has become a popular search techni...
The use of the Monte Carlo playouts as an evaluation function has proved to be a viable, general tec...
Monte-Carlo Tree Search (MCTS) has become a popular search technique for playing multi-player games ...
Monte Carlo tree search (MCTS) is an AI technique that has been successfully applied to many determi...
Monte-carlo tree search (mcts) is a best-first search method guided by the results of monte-carlo si...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
In this paper, we put forward Monte-Carlo Tree Search as a novel, unified framework to game AI, whic...
We evaluate the performance of various selection methods for the Monte Carlo Tree Search algorithm i...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
Monte-Carlo Tree Search (MCTS) has been applied successfully in many domains, including games. Howev...
Partial information games are excellent examples of decision making un- der uncertainty. In particu...