While the use of expected goals (xG) as a metric for assessing soccer performance is increasingly prevalent, the uncertainty associated with their estimates is often overlooked. This work bridges this gap by providing easy-to-implement methods for uncertainty quantification in xG estimates derived from Bayesian models. Based on a convenient posterior approximation, we devise an online prior-to-posterior update scheme, aligning with the typical in-season model training in soccer. Additionally, we present a novel framework to assess and compare the performance dynamics of two teams during a match, while accounting for evolving match scores. Our approach is well-suited for graphical representation and improves interpretability. We validate the accuracy of our methods through simulations, and provide a real-world illustration using data from the Italian Serie A league.

Nipoti, B., Schiavon, L. (2024). Expected goals under a Bayesian viewpoint: uncertainty quantification and online learning. JOURNAL OF QUANTITATIVE ANALYSIS IN SPORTS [10.1515/jqas-2024-0081].

Expected goals under a Bayesian viewpoint: uncertainty quantification and online learning

Nipoti, Bernardo;
2024

Abstract

While the use of expected goals (xG) as a metric for assessing soccer performance is increasingly prevalent, the uncertainty associated with their estimates is often overlooked. This work bridges this gap by providing easy-to-implement methods for uncertainty quantification in xG estimates derived from Bayesian models. Based on a convenient posterior approximation, we devise an online prior-to-posterior update scheme, aligning with the typical in-season model training in soccer. Additionally, we present a novel framework to assess and compare the performance dynamics of two teams during a match, while accounting for evolving match scores. Our approach is well-suited for graphical representation and improves interpretability. We validate the accuracy of our methods through simulations, and provide a real-world illustration using data from the Italian Serie A league.
Articolo in rivista - Articolo scientifico
Bayesian statistics; expected goals; online learning; quadratic approximation; uncertainty quantification;
English
4-nov-2024
2024
reserved
Nipoti, B., Schiavon, L. (2024). Expected goals under a Bayesian viewpoint: uncertainty quantification and online learning. JOURNAL OF QUANTITATIVE ANALYSIS IN SPORTS [10.1515/jqas-2024-0081].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/525319
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