The aim of this paper is to study and develop Bayesian models for the analysis of volleyball match outcomes as recorded by the set-difference. Due to the peculiarity of the outcome variable (set-difference) which takes discrete values from $-3$ to $3$, we cannot consider standard models based on the usual Poisson or binomial assumptions used for other sports such as football/soccer. Hence, the first and foremost challenge was to build models appropriate for the set-differences of each volleyball match. Here we consider two major approaches: a) an ordered multinomial logistic regression model and b) a model based on a truncated version of the Skellam distribution. For the first model, we consider the set-difference as an ordinal response variable within the framework of multinomial logistic regression models. Concerning the second model, we adjust the Skellam distribution in order to account for the volleyball rules. We fit and compare both models with the same covariate structure as in Karlis & Ntzoufras (2003). Both models are fitted, illustrated and compared within Bayesian framework using data from both the regular season and the play-offs of the season 2016/17 of the Greek national men's volleyball league A1.
翻译:本文的目的是研究并开发贝叶西亚模式,用于分析由设定差异记录下来的排球匹配结果。由于结果变量(定位差异)的特殊性,其结果值从3美元到3美元不等,我们无法考虑基于常规Poisson或双向假设的标准模型,用于足球/足球等其他运动。因此,首先和最重要的挑战是为每个排球匹配的设定差异建立适当的模型。这里我们考虑两个主要方法:(a) 订购的多名物流回归模型和(b) 基于Skellam分布的松散版本的模型。关于第一个模型,我们认为定位差异是多位物流回归模型框架内的恒定反应变量。关于第二个模型,我们调整Skellam分布,以核算排球规则。我们把这两种模型与Karlis和Ntzoufras(2003年)的同一变量结构相匹配和比较。两种模型都是基于Skellamd版本的Skellimal-deferal 模型,用来自2016年定期赛季的Gayes Basil1号国家游戏框架加以调整、展示和比较。