Athlete rating in multi-competitor games with scored outcomes via monotone transformations
Sports organizations often want to estimate athlete strengths. For games with scored outcomes, a common approach is to assume observed game scores follow a normal distribution conditional on athletes` latent abilities, which may change over time. In many games, however, this assumption of conditional normality does not hold. To estimate athletes` time-varying latent abilities using non-normal game score data, we propose a Bayesian dynamic linear model with flexible monotone response transformations. Our model learns nonlinear monotone transformations to address non-normality in athlete scores and can be easily fit using standard regression and optimization routines. We demonstrate our method on data from several Olympic sports, including biathlon, diving, rugby, and fencing.
© Copyright 2022 arXiv e-print repository. Опубликовано по Harvard University. Все права защищены.
| Предметы: | |
|---|---|
| нотация: | наука о тренировке молодежный спорт |
| Опубликовано в:: | arXiv e-print repository |
| Язык: | английский |
| Опубликовано: |
Harvard
Harvard University
2022
|
| Online-ссылка: | https://doi.org/10.48550/arXiv.2205.10746 |
| Страницы: | 23 |
| Document types: | электронное издание |
| Уровень: | продвинутый |