Strategy Classication in Multi-agent Environment | Applying Reinforcement Learning to Soccer Agents |
نویسندگان
چکیده
This paper proposes a method for agent behavior clas-sication which estimates the relations between the learner's behaviors and the other agents in the environment through interactions using the method of system identication. In order to identify the model of each agent, Akaike's Information Criterion(AIC) is applied to the result of Canonical Variate Analy-sis(CVA). Next, reinforcement learning based on the estimated state vectors is used in order to obtain the optimal behavior. The proposed method is applied to soccer playing robots. Unlike our previous work, the method can cope with a rolling ball. Computer simulations and preliminary experiments are shown and the discussion is given.
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تاریخ انتشار 1996