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The Prediction of Batting Averages in Major League Baseball

机译:主要联盟棒球击球平均值预测

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The prediction of yearly batting averages in Major League Baseball is a notoriously difficult problem where standard errors using the well-known PECOTA (Player Empirical Comparison and Optimization Test Algorithm) system are roughly 20 points. This paper considers the use of ball-by-ball data provided by the Statcast system in an attempt to predict batting averages. The publicly available Statcast data and resultant predictions supplement proprietary PECOTA forecasts. With detailed Statcast data, we attempt to account for a luck component involving batting averages. It is anticipated that the luck component will not be repeated in future seasons. The two predictions (Statcast and PECOTA) are combined via simple linear regression to provide improved forecasts of batting average.
机译:主要联盟棒球年击球平均值的预测是一个臭名昭着的难题,其中使用众所周知的Pecota(播放器经验比较和优化测试算法)系统的标准误差大约是20分。本文考虑了使用STATCAST系统提供的BAL-BAT-BAT-BATH数据,以试图预测击打平均值。公开的STATCAST数据和结果预测补充了专有的Pecota预测。使用详细的STATCAST数据,我们试图考虑涉及击打平均值的运气组件。预计运气组件将在未来的季节中不再重复。通过简单的线性回归来组合这两种预测(STATCASCT和PECOTA),以提供改进的击球平均预测。

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