Goal and shot prediction in ball possessions in FIFA Women’s World Cup 2023: a machine learning approach

Introduction: Research in women’s football and the use of new game analysis tools have developed significantly in recent years. The objectives of this study were to create two predictive classification models to forecast the occurrence of a shot or a goal in the FIFA Women’s World Cup 2023 and to id...

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Detalles Bibliográficos
Autores: Iván Baragaño, Iyán, Ardá, Antonio, Losada, José Luis, Maneiro, Rubén
Tipo de recurso: artículo
Fecha de publicación:2025
País:España
Institución:Universidad Europea (UEM)
Repositorio:ABACUS. Repositorio de Producción Científica
Idioma:inglés
OAI Identifier:oai:abacus.universidadeuropea.com:11268/14375
Acceso en línea:http://hdl.handle.net/11268/14375
Access Level:acceso abierto
Palabra clave:Fútbol
Deporte
Mujer
Aprendizaje
Goal 3: Ensure healthy lives and promote well-being for all at all ages
Goal 5: Achieve gender equality and empower all women and girls
Descripción
Sumario:Introduction: Research in women’s football and the use of new game analysis tools have developed significantly in recent years. The objectives of this study were to create two predictive classification models to forecast the occurrence of a shot or a goal in the FIFA Women’s World Cup 2023 and to identify the associated technical-tactical indicators to these outcomes. Methods: A total of 2,346 ball possessions were analyzed using an observational design, mapping two different target variables (Success = Goal and Success2 = Goal or Shot) with a relative frequency of 1.28 and 8.35%, respectively. The predictive capacity was tested using Random Forest and XGBoost and finally and SHAP values were calculated and visualized to understand the influence of the predictors. Results: Random Forest technique showed greater efficacy, with recall and sensitivity above 93% in the resampled dataset. However, recall on the original test sample was 13% (Success = Shot or Goal) and 0% (Success = Goal), demonstrating the models’ inability to predict rare events in football, such as goals. The indicators with the greatest influence on the outcome of these possessions were related to the possession zone, attack duration, number of passes, and starting zone, among others.