Athlete Recruitment and the Myth of the Sophomore Peak

M. McGee, Benjamin Williams, Jacy Sparks
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Abstract

Abstract Conventional wisdom dispersed by fans and coaches in the stands at almost any high school track meet suggests female athletes typically peak around 10th grade or earlier (15 years of age), particularly for distance runners, and male athletes continuously improve. Given that universities in the United States typically recruit track and field athletes from high school teams, it is important to understand the age of peak performance at the high school level. Athletes are often recruited starting in their sophomore year of high school and individuals develop at different rates during adolescence; however, the individual development factor is usually not taken into account during recruitment. In this study, we curate data on event times for high school track and field athletes from the years 2011 to 2019 to determine the trajectory of fastest times for male and female athletes in the 200m, 400m, 800m, and 1600m races. We show, through visualizations and models, that, for most athletes, the sophomore peak is a myth. Performance is mostly dependent on the individual athlete. That said, the trajectories cluster into four or five types, depending on the race distance. We explain the significance of the types for future recruitment.
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运动员招募与高二高峰神话
在几乎所有高中田径比赛的看台上,球迷和教练们普遍认为,女性运动员通常在10年级或更早(15岁)左右达到巅峰,尤其是长跑运动员,而男性运动员则在不断提高。考虑到美国的大学通常从高中队伍中招募田径运动员,了解高中水平的最佳表现年龄是很重要的。运动员通常从高中二年级就开始被招募,每个人在青春期的发展速度不同;然而,在招聘过程中,个人发展因素通常不被考虑在内。在这项研究中,我们整理了2011年至2019年高中田径运动员的比赛时间数据,以确定男女运动员在200米、400米、800米和1600米比赛中的最快时间轨迹。我们通过可视化和模型表明,对大多数运动员来说,高二的巅峰是一个神话。成绩主要取决于运动员个人。也就是说,根据比赛距离的不同,这些轨迹可以分为四到五种类型。我们解释了这些类型对未来招聘的意义。
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