Implementation and Design of Basketball Technical Action Based on B/S Framework Data Mining System

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Basketball is a technical sport, and players' shooting action will affect the basketball hit rate, which affects the players' performance and competition results. Therefore, in the process of usual training, players should strengthen the basketball technology actions, under this background, the shooting action of basketball players are optimized. The basketball players are shooting, body lean back angle, release angle and release initial velocities as research object, the use of the B/S frame data mining system develops basketball shooting skills and competition information framework model, and the use of eight quantile statistics method determines the membership function, establishing the association of basketball technology actions and marks, according to the association index, it can successfully optimize design of the basketball shooting parameters.

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2736-2740

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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