Computing an Optimal Pitching Strategy in a Baseball At-Bat
Connor Douglas, Everett Witt, Mia Bendy, and Yevgeniy Vorobeychik

TL;DR
This paper models a baseball at-bat as a zero-sum stochastic game and develops a neural network-based approach to optimize batting strategies, demonstrating improved outcome predictions using MLB data.
Contribution
It introduces a novel zero-sum game model for baseball at-bats and a deep neural network architecture for outcome prediction, advancing strategic decision-making.
Findings
Effective neural network architecture for pitch outcome prediction.
Model captures pitcher and batter behaviors accurately.
Demonstrates improved on-base percentage predictions.
Abstract
The field of quantitative analytics has transformed the world of sports over the last decade. To date, these analytic approaches are statistical at their core, characterizing what is and what was, while using this information to drive decisions about what to do in the future. However, as we often view team sports, such as soccer, hockey, and baseball, as pairwise win-lose encounters, it seems natural to model these as zero-sum games. We propose such a model for one important class of sports encounters: a baseball at-bat, which is a matchup between a pitcher and a batter. Specifically, we propose a novel model of this encounter as a zero-sum stochastic game, in which the goal of the batter is to get on base, an outcome the pitcher aims to prevent. The value of this game is the on-base percentage (i.e., the probability that the batter gets on base). In principle, this stochastic game can…
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Taxonomy
TopicsSports Analytics and Performance · Sports Dynamics and Biomechanics · Time Series Analysis and Forecasting
