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Systems Analysis for University of Virginia Football Recruiting and Performance

机译:弗吉尼亚大学足球招募和表现的系统分析

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The role that data analytics plays on sports teams has increased dramatically since Michael Lewis wrote Moneyball and shed some light on Billy Beane's use of analytics with the Oakland Athletics. Today, every major professional sports team has at least an analytics expert on staff, if not a whole department [1]. College teams are increasing their use of analytics as well. Our research goals were to improve the University of Virginia (U. Va.) football team in two ways: recruiting and on-field performance. Our goal of improving the recruiting process led to the development of two tools. First, we created a model that predicts how well an athlete will perform in college based on their high school statistics and demographics. This tool allows coaches to discover lesser ranked athletes who are likely to outperform their rankings. We also further developed an existing model that predicts how likely players are to commit to U. Va. This tool prevents coaches from potentially wasting valuable time and resources on players who are unlikely to commit to U. Va. In order to improve U. Va.'s on-field performance, we created two additional tools. We developed an expected points model based on existing NFL models in an attempt to evaluate the team's performance and identify areas where our play calling was consistently sub-optimal. Finally, we created matchup reports that the coaches can use to scout opposing teams. The expected points model is integrated into these reports to provide a more accurate assessment of the opponent's performance. With this tool, the coaches will be able to spend less time identifying opponents' strengths and weaknesses and more time preparing to exploit them.
机译:自从迈克尔·刘易斯(Michael Lewis)撰写《 Moneyball》并阐明比利·比恩(Billy Beane)在奥克兰运动会上使用分析法以来,数据分析在运动队中的作用已大大提高。如今,每个主要的专业运动队至少都有一个分析专家,即使不是整个部门也是如此[1]。大学团队也在增加对分析的使用。我们的研究目标是通过两种方式改善弗吉尼亚大学(U. Va。)足球队:征聘和现场表现。我们改善招聘流程的目标导致开发了两种工具。首先,我们创建了一个模型,该模型可以根据运动员的高中统计数据和人口统计学预测运动员在大学中的表现。该工具使教练能够发现排名较低的运动员,而这些运动员的成绩可能会超过其排名。我们还进一步开发了一个现有模型,该模型可以预测球员对弗吉尼亚大学做出的承诺的可能性。此工具可防止教练潜在地浪费宝贵的时间和资源给不太可能对弗吉尼亚大学做出承诺的球员。在现场表现上,我们创建了两个附加工具。我们基于现有的NFL模型开发了一个预期得分模型,以评估球队的表现并确定我们的比赛通话始终处于次优状态的区域。最后,我们创建了对战报告,教练可以使用该报告来侦查对立的球队。预期得分模型已集成到这些报告中,以提供对对手表现的更准确评估。有了这个工具,教练们将能够花费更少的时间来识别对手的长处和短处,而有更多的时间准备利用他们。

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