A Bayesian analysis of the time through the order penalty in baseball

10/13/2022
by   Ryan S. Brill, et al.
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As a baseball game progresses, batters appear to perform better the more times they face a particular pitcher. The apparent drop-off in pitcher performance from one time through the order to the next, known as the Time Through the Order Penalty (TTOP), is often attributed to within-game batter learning. Although the TTOP has largely been accepted within baseball and influences many mangagers' in-game decision making, we argue that existing approaches of estimating the size of the TTOP cannot disentangle batter learning from pitcher fatigue. Using a Bayesian multinomial regression model, we find that, after adjusting for confounders like batter and pitcher quality, handedness, and home field advantage, there is little evidence of a strong batter learning effect. We specifically show that expected weighted on-base average increases steadily over the course of the game and does not display sharp discontinuities reflecting substantial batter learning between times through the order. Our analysis suggests that the start of the third time through the order should not be viewed as a special cutoff point in deciding whether to pull a starting pitcher.

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