MLAPMay 23, 2017

Effective injury forecasting in soccer with GPS training data and machine learning

arXiv:1705.08079v2262 citations
AI Analysis

This addresses injury prevention for professional soccer teams, offering incremental improvements by applying existing methods to new GPS data.

The paper tackled injury forecasting in professional soccer by developing a machine learning model using GPS training data, resulting in an accurate and interpretable forecaster with practical rules for injury prevention.

Injuries have a great impact on professional soccer, due to their large influence on team performance and the considerable costs of rehabilitation for players. Existing studies in the literature provide just a preliminary understanding of which factors mostly affect injury risk, while an evaluation of the potential of statistical models in forecasting injuries is still missing. In this paper, we propose a multi-dimensional approach to injury forecasting in professional soccer that is based on GPS measurements and machine learning. By using GPS tracking technology, we collect data describing the training workload of players in a professional soccer club during a season. We then construct an injury forecaster and show that it is both accurate and interpretable by providing a set of case studies of interest to soccer practitioners. Our approach opens a novel perspective on injury prevention, providing a set of simple and practical rules for evaluating and interpreting the complex relations between injury risk and training performance in professional soccer.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes