標題: Belief-State Monte Carlo Tree Search for Phantom Go
作者: Wang, Jiao
Zhu, Tan
Li, Hongye
Hsueh, Chu-Husan
Wu, I. -Chen
資訊工程學系
Department of Computer Science
關鍵字: All moves as first (AMAF);belief-state;imperfect information games;Monte Carlo methods;Phantom Go
公開日期: 1-六月-2018
摘要: Phantom Go is a derivative of Go with imperfect information. It is challenging in AI field due to its great uncertainty of the hidden information and high game complexity inherited from Go. To deal with this imperfect information game with large game tree complexity, a general search framework named belief-state Monte Carlo tree search (BS-MCTS) is put forward in this paper. BS-MCTS incorporates belief-states into Monte Carlo Tree Search, where belief-state is a notation derived from philosophy to represent the probability that speculation is in accordance with reality. In BS-MCTS, a belief-state tree, in which each node is a belief-state, is constructed and search proceeds in accordance with beliefs. Then, Opponent Guessing and Opponent Predicting are proposed to illuminate the learning mechanism of beliefs with heuristic information. The beliefs are learned by heuristic information during search by specific methods, and we propose Opponent Guessing and Opponent Predicting to illuminate the learningmechanism. Besides, some possible improvements of the framework are investigated, such as incremental updating and all moves as first (AMAF) heuristic. Technical details are demonstrated about applying BS-MCTS to Phantom Go, especially on inference strategy. We examine the playing strength of the BS-MCTS and AMAF-BS-MCTS in Phantom Go by varying search parameters, also testify the proposed improvements.
URI: http://dx.doi.org/10.1109/TCIAIG.2017.2734067
http://hdl.handle.net/11536/148296
ISSN: 2475-1502
DOI: 10.1109/TCIAIG.2017.2734067
期刊: IEEE TRANSACTIONS ON GAMES
Volume: 10
起始頁: 139
結束頁: 154
顯示於類別:期刊論文