Rao-Blackwellizing field goal percentage

Author:

Daly-Grafstein Daniel1,Bornn Luke1

Affiliation:

1. Department of Statistics , Simon Fraser University , Burnaby, British Columbia V5A 1S6 , Canada

Abstract

Abstract Shooting skill in the NBA is typically measured by field goal percentage (FG%) – the number of makes out of the total number of shots. Even more advanced metrics like true shooting percentage are calculated by counting each player’s 2-point, 3-point, and free throw makes and misses, ignoring the spatiotemporal data now available (Kubatko et al. 2007). In this paper we aim to better characterize player shooting skill by introducing a new estimator based on post-shot release shot-make probabilities. Via the Rao-Blackwell theorem, we propose a shot-make probability model that conditions probability estimates on shot trajectory information, thereby reducing the variance of the new estimator relative to standard FG%. We obtain shooting information by using optical tracking data to estimate three factors for each shot: entry angle, shot depth, and left-right accuracy. Next we use these factors to model shot-make probabilities for all shots in the 2014–2015 season, and use these probabilities to produce a Rao-Blackwellized FG% estimator (RB-FG%) for each player. We demonstrate that RB-FG% is better than raw FG% at predicting 3-point shooting and true-shooting percentages. Overall, we find that conditioning shot-make probabilities on spatial trajectory information stabilizes inference of FG%, creating the potential to estimate shooting statistics earlier in a season than was previously possible.

Funder

Canadian Network for Research and Innovation in Machining Technology, Natural Sciences and Engineering Research Council of Canada

Publisher

Walter de Gruyter GmbH

Subject

Decision Sciences (miscellaneous),Social Sciences (miscellaneous)

Reference16 articles.

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2. Blackport, D. 2014. “How Long Does it Take for Three Point Shooting to Stabilize?” https://fansided.com/-2014/08/29/long-take-three-point-shooting-stabilize/. November 11th, 2017.

3. Brown, L. D. 2008. “In-Season Prediction of Batting Averages: A Field Test of Empirical Bayes and Bayes Methodologies.” The Annals of Applied Statistics 2:113–152.

4. Casella, G. 1985. “An Introduction to Empirical Bayes Data Analysis.” The American Statistician 39:83–87.

5. Chang, Y. H., R. Maheswaran, J. Su, S. Kwok, T. Levy, A. Wexler, and K. Squire. 2014. “Quantifying Shot Quality in the NBA.” Proceedings of the 2014 MIT Sloan Sports Analytics Conference.

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