DocumentCode :
3683534
Title :
Enhancements in Monte Carlo tree search algorithms for biased game trees
Author :
Takahisa Imagawa;Tomoyuki Kaneko
Author_Institution :
Graduate School of Arts and Sciences, the University of Tokyo
fYear :
2015
Firstpage :
43
Lastpage :
50
Abstract :
Monte Carlo tree search (MCTS) algorithms have been applied to various domains and achieved remarkable success. However, it is relatively unclear what game properties enhance or degrade the performance of MCTS, while the largeness of search space including pruning efficiency mainly governs the performance of classical minimax search, assuming a decent evaluation function is given. Existing research has shown that the distribution of suboptimal moves and the non-uniformity of tree shape are more important than the largeness of state space in discussing the performance of MCTS. Our study showed that another property, bias in suboptimal moves, is also important, and we present an enhancement to better handle such situations. We focus on a game tree in which the game-theoretical value is even, while suboptimal moves for a player tend to contain more inferior moves than those for the opponent. We conducted experiments on a standard incremental tree model with various MCTS algorithms based on UCB1, KL-UCB, or Thompson sampling. The results showed that the bias in suboptimal moves degraded the performance of all algorithms and that our enhancement alleviated the effect caused by this property.
Keywords :
"Games","Heuristic algorithms","Standards","Monte Carlo methods","Mathematical model","Search methods","Analytical models"
Publisher :
ieee
Conference_Titel :
Computational Intelligence and Games (CIG), 2015 IEEE Conference on
ISSN :
2325-4270
Electronic_ISBN :
2325-4289
Type :
conf
DOI :
10.1109/CIG.2015.7317924
Filename :
7317924
Link To Document :
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