Distributed lag models to identify the cumulative effects of training and recovery in athletes using multivariate ordinal wellness data

IF 1.1 Q3 SOCIAL SCIENCES, MATHEMATICAL METHODS Journal of Quantitative Analysis in Sports Pub Date : 2020-05-18 DOI:10.1515/jqas-2020-0051
Erin M. Schliep, Toryn L. J. Schafer, Matt J. Hawkey
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Abstract

Abstract Subjective wellness data can provide important information on the well-being of athletes and be used to maximize player performance and detect and prevent against injury. Wellness data, which are often ordinal and multivariate, include metrics relating to the physical, mental, and emotional status of the athlete. Training and recovery can have significant short- and long-term effects on athlete wellness, and these effects can vary across individual. We develop a joint multivariate latent factor model for ordinal response data to investigate the effects of training and recovery on athlete wellness. We use a latent factor distributed lag model to capture the cumulative effects of training and recovery through time. Current efforts using subjective wellness data have averaged over these metrics to create a univariate summary of wellness, however this approach can mask important information in the data. Our multivariate model leverages each ordinal variable and can be used to identify the relative importance of each in monitoring athlete wellness. The model is applied to professional referee daily wellness, training, and recovery data collected across two Major League Soccer seasons.
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使用多元有序健康数据的分布滞后模型来识别运动员训练和恢复的累积效应
主观健康数据可以为运动员的健康状况提供重要的信息,并用于最大限度地提高运动员的表现,检测和预防伤害。健康数据通常是有序和多元的,包括与运动员的身体、精神和情绪状态有关的指标。训练和恢复对运动员的健康有显著的短期和长期影响,这些影响因人而异。我们开发了一个联合多变量潜在因素模型的有序响应数据来研究训练和恢复对运动员健康的影响。我们使用一个潜在因素分布滞后模型来捕捉训练和恢复随时间的累积效应。目前使用主观健康数据的努力是对这些指标进行平均,以创建健康的单变量摘要,然而这种方法可能会掩盖数据中的重要信息。我们的多变量模型利用了每个有序变量,可以用来确定每个变量在监测运动员健康方面的相对重要性。该模型应用于职业裁判的日常健康、训练和恢复数据,这些数据收集于两个美国职业足球大联盟赛季。
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来源期刊
Journal of Quantitative Analysis in Sports
Journal of Quantitative Analysis in Sports SOCIAL SCIENCES, MATHEMATICAL METHODS-
CiteScore
2.00
自引率
12.50%
发文量
15
期刊介绍: The Journal of Quantitative Analysis in Sports (JQAS), an official journal of the American Statistical Association, publishes timely, high-quality peer-reviewed research on the quantitative aspects of professional and amateur sports, including collegiate and Olympic competition. The scope of application reflects the increasing demand for novel methods to analyze and understand data in the growing field of sports analytics. Articles come from a wide variety of sports and diverse perspectives, and address topics such as game outcome models, measurement and evaluation of player performance, tournament structure, analysis of rules and adjudication, within-game strategy, analysis of sporting technologies, and player and team ranking methods. JQAS seeks to publish manuscripts that demonstrate original ways of approaching problems, develop cutting edge methods, and apply innovative thinking to solve difficult challenges in sports contexts. JQAS brings together researchers from various disciplines, including statistics, operations research, machine learning, scientific computing, econometrics, and sports management.
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