Moving from Machine Learning to Statistics: the case of Expected Points in American football
Expected points is a value function fundamental to player evaluation and strategic in-game decision-making across sports analytics, particularly in American football. To estimate expected points, football analysts use machine learning tools, which are not equipped to handle certain challenges. They...
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Zusammenfassung: | Expected points is a value function fundamental to player evaluation and
strategic in-game decision-making across sports analytics, particularly in
American football. To estimate expected points, football analysts use machine
learning tools, which are not equipped to handle certain challenges. They
suffer from selection bias, display counter-intuitive artifacts of overfitting,
do not quantify uncertainty in point estimates, and do not account for the
strong dependence structure of observational football data. These issues are
not unique to American football or even sports analytics; they are general
problems analysts encounter across various statistical applications,
particularly when using machine learning in lieu of traditional statistical
models. We explore these issues in detail and devise expected points models
that account for them. We also introduce a widely applicable novel
methodological approach to mitigate overfitting, using a catalytic prior to
smooth our machine learning models. |
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DOI: | 10.48550/arxiv.2409.04889 |