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A Monte Carlo comparison of alternative methods of maximum likelihood ranking in racing sports

机译:蒙特卡洛比较赛车运动中最大可能性排序的替代方法

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摘要

Applications of maximum likelihood techniques to rank competitors in sports are commonly based on the assumption that each competitor's performance is a function of a deterministic component that represents inherent ability and a stochastic component that the competitor has limited control over. Perhaps based on an appeal to the central limit theorem, the stochastic component of performance has often been assumed to be a normal random variable. However, in the context of a racing sport, this assumption is problematic because the resulting model is the computationally difficult rank-ordered probit. Although a rank-ordered logit is a viable alternative, a Thurstonian paired-comparison model could also be applied. The purpose of this analysis was to compare the performance of the rank-ordered logit and Thurstonian paired-comparison models given the objective of ranking competitors based on ability. Monte Carlo simulations were used to generate race results based on a known ranking of competitors, assign rankings from the results of the two models, and judge performance based on Spearman's rank correlation coefficient. Results suggest that in many applications, a Thurstonian model can outperform a rank-ordered logit if each competitor's performance is normally distributed.
机译:最大似然技术在体育比赛中对运动员进行排名的应用通常是基于以下假设:每个运动员的表现是代表固有能力的确定性成分和竞争者对其控制力有限的随机成分的函数。也许基于对中心极限定理的吸引力,经常将性能的随机成分假定为正常随机变量。但是,在赛车运动的情况下,此假设是有问题的,因为生成的模型是计算上困难的排名概率。尽管按顺序排列logit是可行的选择,但也可以应用Thurstonian配对比较模型。该分析的目的是比较给定按能力对竞争对手进行排名的目标,从而比较按顺序进行的logit和Thurstonian配对比较模型的性能。蒙特卡洛模拟用于根据已知的竞争对手排名生成比赛结果,根据两个模型的结果分配排名,并根据Spearman的排名相关系数判断表现。结果表明,在每个应用程序中,如果每个竞争者的表现均呈正态分布,则Thurstonian模型的性能可优于按顺序排列的logit。

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