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Modeling the probability of a batter/pitcher matchup event: A Bayesian approach

机译:对击球手/投手对决事件的概率建模:贝叶斯方法

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摘要

We develop a Bayesian hierarchical log5 model to predict the probability of a particular batter/pitcher matchup event in baseball by extending the log5 model which is widely used for describing matchup events. The log5 model is simple and intuitive with fixed coefficients but less flexible than the generalized log5 model that allows the estimation of coefficients using data. Meanwhile, although the generalized log5 model is more flexible, the estimation of coefficients often suffers from a lack of data as a large sample of previous outcomes for a particular batter/pitcher matchup is rarely available in practice. The proposed Bayesian hierarchical log5 model retains the advantages of both models while complementing their disadvantages by estimating the unknown coefficients as in the generalized log5 model, but by using the fixed coefficients of the standard log5 model as prior knowledge. By combining the ideas of the two previous models, the proposed model can estimate the probability of a particular matchup event using a small amount of historical data of the players. Furthermore, we show that the Bayesian hierarchical log5 model achieves better predictive performance than the standard log5 model and the generalized log5 model using a real data example. We further extend the proposed model by including a new variable representing the defensive ability of the pitcher’s team and show that the extended model can further improve the predictive performance of the Bayesian hierarchical log5 model.
机译:我们通过扩展广泛用于描述比赛事件的log5模型,开发了贝叶斯分级log5模型来预测棒球中特定击球手/投手比赛事件的概率。 log5模型简单且直观,系数固定,但不如允许使用数据估算系数的广义log5模型灵活。同时,尽管广义的log5模型更加灵活,但是系数的估计通常会因缺乏数据而受到困扰,因为在实践中很少有针对特定击球手/投手对决的大量先前结果样本。所提出的贝叶斯分层log5模型保留了两个模型的优点,同时通过估计未知系数来弥补它们的缺点,就像在通用log5模型中那样,但是通过使用标准log5模型的固定系数作为先验知识。通过结合先前两个模型的思想,提出的模型可以使用少量玩家的历史数据来估计特定对决事件的概率。此外,我们使用实际数据示例显示,贝叶斯分层log5模型比标准log5模型和广义log5模型具有更好的预测性能。我们通过包括代表投手队防守能力的新变量来进一步扩展建议的模型,并表明扩展后的模型可以进一步提高贝叶斯分层log5模型的预测性能。

著录项

  • 期刊名称 PLoS Clinical Trials
  • 作者

    Woojin Doo; Heeyoung Kim;

  • 作者单位
  • 年(卷),期 2012(13),10
  • 年度 2012
  • 页码 e0204874
  • 总页数 11
  • 原文格式 PDF
  • 正文语种
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