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首页> 外文期刊>Journal of Quantitative Analysis in Sports >Using Local Correlation to Explain Success in Baseball
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Using Local Correlation to Explain Success in Baseball

机译:使用局部相关性说明棒球的成功

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摘要

Statisticians have long employed linear regression models in a variety of circumstances, including the analysis of sports data, because of their flexibility, ease of interpretation, and computational tractability. However, advances in computing technology have made it possible to develop and employ more complicated, nonlinear, and nonparametric procedures. We propose a fully nonparametric nonlinear regression model that is associated to a local correlation function instead of the usual Pearson correlation coefficient. The proposed nonlinear regression model serves the same role as a traditional linear model, but generates deeper and more detailed information about the relationships between the variables being analyzed. We show how nonlinear regression and the local correlation function can be used to analyze sports data by presenting three examples from the game of baseball. In the first and second examples, we demonstrate use of nonlinear regression and the local correlation function as descriptive and inferential tools, respectively. In the third example, we show that nonlinear regression modeling can reveal that traditional linear models are, in fact, quite adequate. Finally, we provide a guide to software for implementing nonlinear regression. The purpose of this paper is to make nonlinear regression and local correlation analysis available as investigative tools for sports data enthusiasts.
机译:统计学家长期以来在各种情况下都采用线性回归模型,包括对体育数据的分析,这是因为它们具有灵活性,易于解释和易于计算的特点。但是,计算技术的进步使开发和采用更复杂,非线性和非参数过程成为可能。我们提出了一个完全非参数的非线性回归模型,该模型与局部相关函数而不是通常的Pearson相关系数相关。所提出的非线性回归模型与传统线性模型具有相同的作用,但是会生成有关要分析的变量之间的关系的更深入,更详细的信息。通过展示棒球比赛中的三个示例,我们展示了如何使用非线性回归和局部相关函数来分析体育数据。在第一个和第二个示例中,我们分别演示了使用非线性回归和局部相关函数作为描述工具和推论工具。在第三个示例中,我们展示了非线性回归建模可以揭示出传统的线性模型实际上是足够的。最后,我们为实现非线性回归的软件提供了指南。本文的目的是为体育数据爱好者提供非线性回归和局部相关分析作为研究工具。

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