A Team-Compatibility Decision Support System for the National Football League

Q2 Computer Science
William A. Young, G. Weckman
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引用次数: 1

Abstract

Abstract Many factors are considered when making a hiring decision in the National Football League (NFL). One difficult decision that executives must make is who they will select in the offseason. Mathematical models can be developed to aid humans in their decision-making processes because these models are able to find hidden relationships within numeric data. This research proposes the Heuristic Evaluation of Artificially Replaced Teammates (HEART) methodology, which is a mathematical model that utilizes machine learning and statistical-based methodologies to aid managers with their hiring decisions. The goal of HEART is to determine expected and theoretical contribution values for a potential candidate, which represents a player’s ability to increase or decrease a team’s forecasted winning percentage. In order to validate the usefulness of the methodology, the results of a 2007 case study were presented to subject matter experts. After analyzing the survey results statistically, five of the eight decision-making categories were found to be “very useful” in terms of the information that the methodology provided.
国家橄榄球联盟的团队兼容性决策支持系统
在美国国家橄榄球联盟(NFL)做出招聘决定时,要考虑许多因素。高管们必须做出的一个艰难决定是,他们将在休赛期选择谁。可以开发数学模型来帮助人类进行决策过程,因为这些模型能够发现数字数据中隐藏的关系。本研究提出了人工替代队友的启发式评估(HEART)方法,这是一种利用机器学习和基于统计的方法来帮助管理者做出招聘决策的数学模型。HEART的目标是确定潜在候选人的预期和理论贡献值,这代表了球员增加或减少球队预测胜率的能力。为了验证该方法的有效性,2007年案例研究的结果被提交给主题专家。在对调查结果进行统计分析后,发现就方法所提供的资料而言,八种决策类别中有五种“非常有用”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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