A Multiresolution Stochastic Process Model for Predicting Basketball Possession Outcomes
Top Cited Papers
- 2 April 2016
- journal article
- applications and-case-studies
- Published by Taylor & Francis Ltd in Journal of the American Statistical Association
- Vol. 111 (514), 585-599
- https://doi.org/10.1080/01621459.2016.1141685
Abstract
Basketball games evolve continuously in space and time as players constantly interact with their teammates, the opposing team, and the ball. However, current analyses of basketball outcomes rely on discretized summaries of the game that reduce such interactions to tallies of points, assists, and similar events. In this article, we propose a framework for using optical player tracking data to estimate, in real time, the expected number of points obtained by the end of a possession. This quantity, called expected possession value (EPV), derives from a stochastic process model for the evolution of a basketball possession. We model this process at multiple levels of resolution, differentiating between continuous, infinitesimal movements of players, and discrete events such as shot attempts and turnovers. Transition kernels are estimated using hierarchical spatiotemporal models that share information across players while remaining computationally tractable on very large data sets. In addition to estimating EPV, these models reveal novel insights on players’ decision-making tendencies as a function of their spatial strategy. In the supplementary material, we provide a data sample and R code for further exploration of our model and its results.Other Versions
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