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Bayesian Inferences on Uncertain Ranks and Orderings: Application to Ranking Players and Lineups

Bayesian Analysis(2023)

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摘要
It is common to be interested in rankings or order relationships among entities. In complex settings where one does not directly measure a univariate statistic upon which to base ranks, such inferences typically rely on statistical models having entity-specific parameters. These can be treated as random effects in hierarchical models characterizing variation among the entities. In this paper, we are particularly interested in the problem of ranking basketball players in terms of their contribution to team performance. Using data from the National Basket-ball Association (NBA) in the United States, we find that many players have sim-ilar latent ability levels, making any single estimated ranking highly misleading. The current literature fails to provide summaries of order relationships that ade-quately account for uncertainty. Motivated by this, we propose a Bayesian strategy for characterizing uncertainty in inferences on order relationships among players and lineups. Our approach adapts to scenarios in which uncertainty in ordering is high by producing more conservative results that improve interpretability. This is achieved through a reward function within a decision theoretic framework. We apply our approach to data from the 2009-2010 NBA season.
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关键词
Bayesian,ordering statements,ranking,decision theory,sports statistics
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