Paired comparison models are used for analyzing data that involves pairwise comparisons among a set of objects. When the outcomes of the pairwise comparisons have no ties, the paired comparison models can be generalized as a class of binary response models. Receiver operating characteristic (ROC) curves and their corresponding areas under the curves are commonly used as performance metrics to evaluate the discriminating ability of binary response models. Despite their individual wide range of usage and their close connection to binary response models, ROC analysis to our knowledge has never been extended to paired comparison models since the problem of using different objects as the reference in paired comparison models prevents traditional ROC approach from generating unambiguous and interpretable curves. We focus on addressing this problem by proposing two novel methods to construct ROC curves for paired comparison data which provide interpretable statistics and maintain desired asymptotic properties. The methods are then applied and analyzed on head-to-head professional sports competition data.
翻译:在对等比较结果没有联系的情况下,配对比较模型可以作为二进制反应模型的类别加以普及。接收器操作特征曲线及其曲线下的相应区域通常用作性能衡量标准,用以评价二进制反应模型的差别性能力。尽管它们各自的使用范围很广,而且与二进制反应模型有着密切的联系,但是,对等比较模型的分析从未扩大到对等比较模型,因为使用不同对象作为对等比较模型的参照问题,使得传统的对等比较模型无法产生明确和可解释的曲线。我们着重处理这个问题,提出了两种新的方法,用于构建对齐比较数据的对齐计算曲线,以提供可解释的统计数据,并保持人们所期望的无损特性。然后,在头对头专业体育竞赛数据上应用和分析这些方法。