Benjamin Williams, Erin M. Schliep, Bailey Fosdick, Ryan Elmore
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Expected Points Above Average: A Novel NBA Player Metric Based on Bayesian Hierarchical Modeling
Team and player evaluation in professional sport is extremely important given
the financial implications of success/failure. It is especially critical to
identify and retain elite shooters in the National Basketball Association
(NBA), one of the premier basketball leagues worldwide because the ultimate
goal of the game is to score more points than one's opponent. To this end we
propose two novel basketball metrics: "expected points" for team-based
comparisons and "expected points above average (EPAA)" as a player-evaluation
tool. Both metrics leverage posterior samples from Bayesian hierarchical
modeling framework to cluster teams and players based on their shooting
propensities and abilities. We illustrate the concepts for the top 100 shot
takers over the last decade and offer our metric as an additional metric for
evaluating players.