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A Ranking Model Motivated by Nonnegative Matrix Factorization with Applications to Tennis Tournaments

机译:基于非负矩阵分解的排名模型及其在网球比赛中的应用

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We propose a novel ranking model that combines the Bradley-Terry-Luce probability model with a nonnegative matrix factorization framework to model and uncover the presence of latent vari- " ables that influence the performance of top tennis players. We derive an efficient, provably convergent, and numerically stable majorization-minimization-based algorithm to maximize the likelihood of datasets under the proposed statistical model. The model is tested on datasets involving the outcomes of matches between 20 top male and female tennis players over 14 major tournaments for men (including the Grand Slams and the ATP Masters 1000) and 16 major tournaments for women over the past 10 years. Our model automatically infers that the surface of the court (e.g., clay or hard court) is a key determinant of the performances of male players, but less so for females. Top players on various surfaces over this longitudinal period are also identified in an objective manner.
机译:我们提出了一种新颖的排名模型,该模型将Bradley-Terry-Luce概率模型与非负矩阵分解框架相结合,以建模并发现影响顶级网球运动员表现的潜在变量。 ,以及基于数值稳定化,基于最小化的最小化算法,以在所提出的统计模型下最大化数据集的可能性。该模型在涉及20个男性和女性网球选手在14项主要比赛中的最高比赛成绩的数据集上进行了测试(包括过去10年中,大满贯和ATP Masters 1000锦标赛以及16个女子大赛,我们的模型自动推断出球场的表面(例如,红土场或硬地球场)是决定男性球员表现的关键因素,但是此外,还可以客观地确定在此纵向期间在各个表面上表现出色的顶尖球员。

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