BatMiner for Identifying the Characteristics of Athletes in Training

This chapter deals with identifying the characteristics of athletes in training. According to the theory of the sports training, this identification is conducted after an evaluation phase, where goals set prior to the training cycle are compared with the achieved results. The purpose of this process is to discover those characteristics of the athlete that have the greatest positive impact on performance. Improving these characteristics needs to be more strongly emphasized in the planning the training sessions in next training cycles.

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