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Rating Player Actions in Soccer.

Uwe Dick1, Maryam Tavakol2, Ulf Brefeld1

  • 1Machine Learning Group, Leuphana University of Lüneburg, Lüneburg, Germany.

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Summary
This summary is machine-generated.

This study introduces a data-driven model to evaluate soccer player actions based on their contribution to ball possession. The model uses a graph recurrent neural network (GRNN) to predict player movement and game outcomes, enabling new performance metrics.

Keywords:
graph networkssoccersports analyticstrajectory datatrajectory prediction

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Area of Science:

  • Sports Analytics
  • Machine Learning in Sports
  • Football Performance Analysis

Background:

  • Evaluating individual player contributions in soccer is complex.
  • Traditional metrics often fail to capture the nuances of player actions during ball possession.
  • Data-driven approaches are increasingly vital for objective performance assessment.

Purpose of the Study:

  • To develop a novel data-driven model for rating player actions in soccer based on their contribution to ball possession phases.
  • To create a system that predicts both player trajectories and the outcomes of possession phases.
  • To establish aggregated performance indicators for comparing player contributions to team success.

Main Methods:

  • Utilized real-world soccer tracking data to train a trajectory prediction model.
  • Developed a prediction model for ball possession phase outcomes.
  • Employed a graph recurrent neural network (GRNN) to model player-ball interactions.
  • Derived aggregated performance indicators from model outputs.

Main Results:

  • The GRNN model reliably predicts player trajectories.
  • The model accurately forecasts the outcomes of ball possession phases.
  • Empirical validation confirms the model's predictive capabilities.
  • Generated a set of performance indicators to assess player contributions.

Conclusions:

  • The proposed data-driven model offers a robust method for evaluating player performance in soccer.
  • The model's ability to predict trajectories and outcomes enhances understanding of player impact.
  • The derived performance indicators provide a more objective measure of a player's contribution to team success.