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Analysis and Modeling of Football Team’s Collaboration Mode and Performance Evaluation Using Network Science and BP Neural Network

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  • Jian Zhang
  • Xueyin Zhao
  • Yushuai Wu
  • Peng Cao
  • Xuhao Wang
  • Feiting Shi
  • Yu Niu

Abstract

With the continuous development of society, the cooperation of different dimensions is urgently needed. Analysis and modeling of team cooperation model and performance evaluation are especially important for competitive sport. In this paper, a football team’s attacking mode and the team performance were assessed using network science methodologies. The match process was analyzed by using the data of Team A (given in the form of attachment due to excessive file size) and the method of complex network science. Each player was regarded as a node in the network, and the interaction among players was considered as the connection to the network. This method directly reflected the favorable formation of the team and the interaction frequency among members. Then, a team performance evaluation model was established using the backpropagation neural network (BPNN) and the uncrossed analytic hierarchy process (U-AHP) method based on the factors including the number of passes and successful pass rate. The team performance was comprehensively rated from two levels: member and team level. Analysis from established models indicated that Team A had a higher probability of winning when using the “4-4-2” offensive strategy and performance evaluation analysis indicated that more passes and higher pass success rates were more beneficial to win the game. Following the model developed in this study, some suggestions were given from the perspectives of team strategy, attack mode, cooperation, and incentive mode.

Suggested Citation

  • Jian Zhang & Xueyin Zhao & Yushuai Wu & Peng Cao & Xuhao Wang & Feiting Shi & Yu Niu, 2020. "Analysis and Modeling of Football Team’s Collaboration Mode and Performance Evaluation Using Network Science and BP Neural Network," Mathematical Problems in Engineering, Hindawi, vol. 2020, pages 1-13, July.
  • Handle: RePEc:hin:jnlmpe:7397169
    DOI: 10.1155/2020/7397169
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