Monte Carlo tree search has brought significantimprovements to the level of computer players ingames such as Go, but so far it has not been usedvery extensively in games of strongly imperfect in-formation with a dynamic board and an emphasison risk management and decision making under un-certainty. In this paper we explore its application tothe game of Kriegspiel (invisible chess), providingthree Monte Carlo methods of increasing strengthfor playing the game with little specific knowl-edge. We compare these Monte Carlo agents to thestrongest known minimax-based Kriegspiel player,obtaining significantly better results with a con-siderably simpler logic and less domain-specificknowledge
Recently, Monte-Carlo Tree Search (MCTS) has advanced the field of computer Go substantially. In thi...
Abstract. Recently, Monte-Carlo Tree Search (MCTS) has advanced the field of computer Go substantial...
The success of Monte Carlo tree search (MCTS) in many games, where alpha beta-based search has faile...
Monte Carlo tree search has brought significantimprovements to the level of computer players ingames...
AbstractPartial information games are excellent examples of decision making under uncertainty. In pa...
none2Partial information games are excellent examples of decision making un- der uncertainty. In pa...
Monte-carlo tree search (mcts) is a best-first search method guided by the results of monte-carlo si...
The Monte-Carlo Tree Search (MCTS) algorithm has in recent years captured the attention of many res...
Recently the use of the Monte-Carlo Tree Search algorithm, and in particular its most famous impleme...
Recently the use of the Monte-Carlo Tree Search algorithm, and in particular its most famous impleme...
Back in 1950, Shannon introduced planning in board games like Chess as a selective approach, where t...
Summarization: Monte Carlo Tree Search (MCTS) is a decision-making technique that has received consi...
This paper describes how Monte Carlo tree search (MCTS) can be applied to the hide-and-seek game Sco...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
Abstract. Monte-Carlo tree search is a powerful paradigm for full infor-mation games. We present var...
Recently, Monte-Carlo Tree Search (MCTS) has advanced the field of computer Go substantially. In thi...
Abstract. Recently, Monte-Carlo Tree Search (MCTS) has advanced the field of computer Go substantial...
The success of Monte Carlo tree search (MCTS) in many games, where alpha beta-based search has faile...
Monte Carlo tree search has brought significantimprovements to the level of computer players ingames...
AbstractPartial information games are excellent examples of decision making under uncertainty. In pa...
none2Partial information games are excellent examples of decision making un- der uncertainty. In pa...
Monte-carlo tree search (mcts) is a best-first search method guided by the results of monte-carlo si...
The Monte-Carlo Tree Search (MCTS) algorithm has in recent years captured the attention of many res...
Recently the use of the Monte-Carlo Tree Search algorithm, and in particular its most famous impleme...
Recently the use of the Monte-Carlo Tree Search algorithm, and in particular its most famous impleme...
Back in 1950, Shannon introduced planning in board games like Chess as a selective approach, where t...
Summarization: Monte Carlo Tree Search (MCTS) is a decision-making technique that has received consi...
This paper describes how Monte Carlo tree search (MCTS) can be applied to the hide-and-seek game Sco...
Abstract. Monte-Carlo Tree Search algorithm, and in particular with the Upper Confidence Bounds form...
Abstract. Monte-Carlo tree search is a powerful paradigm for full infor-mation games. We present var...
Recently, Monte-Carlo Tree Search (MCTS) has advanced the field of computer Go substantially. In thi...
Abstract. Recently, Monte-Carlo Tree Search (MCTS) has advanced the field of computer Go substantial...
The success of Monte Carlo tree search (MCTS) in many games, where alpha beta-based search has faile...