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The Scoring Mechanism of Players after Game Based on Cluster Regression Analysis Model

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  • Jin Xu
  • Chao Yi

Abstract

Cluster regression analysis model is an effective theory for a reasonable and fair player scoring game. It can roughly predict and evaluate the performance of athletes after the game with limited data and provide scientific predictions for the performance of athletes. The purpose of this research is to achieve the player’s postmatch scoring through the cluster regression model. Through the research and analysis of past ball games, the comparison and experiment of multiple objects based on different regression analysis theories, the following conclusions are drawn. Different regression models have different standard errors, but if the data in other model categories are put into the centroid model expression, the standard error and the error of the original model are within 0.3, which can replace other models for calculation. In the player’s postmatch scoring, although the expert’s prediction of the result is very accurate, within the error range of 1 copy, the player’s postmatch scoring mechanism based on the cluster regression analysis model is more accurate, and the error formula is in the 0.5 range. It is best to switch the data of the regression model twice to compare the scoring mechanism using different regression experiments.

Suggested Citation

  • Jin Xu & Chao Yi, 2021. "The Scoring Mechanism of Players after Game Based on Cluster Regression Analysis Model," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-7, March.
  • Handle: RePEc:hin:jnlmpe:5524076
    DOI: 10.1155/2021/5524076
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