Behavior Classification with Self-Organizing Maps
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We describe a method that applies Self-Organizing Maps for direct clustering of spatio-temporal data. We use the method to evaluate the behavior of RoboCup players. By training the Self-Organizing Map with player data we have the possibility to identify various clusters representing typical agent behavior patterns. Thus we can draw certain conclusions about their tactical behavior, using purely motion data, i.e. logfile information. In addition, we examine the player-ball interaction that give information about the players' technical capabilities.
[1] Helge J. Ritter,et al. Neural computation and self-organizing maps - an introduction , 1992, Computation and neural systems series.
[2] John G. Taylor,et al. The temporal Kohönen map , 1993, Neural Networks.
[3] Teuvo Kohonen,et al. Self-Organization and Associative Memory , 1988 .
[4] Teuvo Kohonen,et al. Self-organization and associative memory: 3rd edition , 1989 .