In most of current computer games, computer-controlled opponents are often guided by a limited set of fixed strategies. The behavioral repetition of computer-controlled opponents reduces the human player's enjoyment during gameplay. Furthermore, the predefined fixed difficulty levels of a game are not satisfactory to most human players. Human players prefer challenging games which keep level with them. Hence, in this study we propose a fuzzy approach to adapting opponents' tactics to the behavior of the player such that the player's win/loss rate is kept at their desired rate. The value of the desired rate can be preset by the player according to the player's preference for challenge. Our experiments are conducted on a predator/prey game. The experimental results show the adaptation efficiency and robustness of the proposed method.
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