A Logistic Regression/Markov Chain Model for American College Football

Q2 Computer Science
Jason Kolbush, J. Sokol
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引用次数: 10

Abstract

Abstract Kvam and Sokol developed a successful logistic regression/Markov chain (LRMC) model for ranking college basketball teams part of Division I of the National Colligate Athletic Association (NCAA). In their 2006 publication, they illustrated that the LRMC model is one of the most successful ranking systems in predicting the outcome of the NCAA Division I Basketball Tournament. However, it cannot directly be extended to college football because of the lack of home-and-home matchups that LRMC exploits in performing its Logistic Regression. We present a common-opponents-based approach that allows us to perform a Logistic Regression and thus create a football LRMC (F-LRMC) model. This approach compares the margin of victory of home teams to their winning percentage in games played against common-opponents with the away team. Computational results show that F-LRMC is among the best of the many ranking systems tracked by Massey's College Football Ranking Composite.
美国大学橄榄球的Logistic回归/Markov链模型
摘要Kvam和Sokol开发了一个成功的逻辑回归/马尔可夫链(LRMC)模型,用于对美国国家科利盖特体育协会(NCAA)第一赛区的大学篮球队进行排名。在2006年的出版物中,他们指出LRMC模型是预测NCAA第一赛区篮球锦标赛结果最成功的排名系统之一。然而,它不能直接推广到大学橄榄球,因为LRMC在进行逻辑回归时缺乏主场和主场比赛。我们提出了一种常见的基于对手的方法,允许我们执行逻辑回归,从而创建足球LRMC(F-LRMC)模型。这种方法将主队的胜率与他们在客场对阵普通对手的比赛中的胜率进行比较。计算结果表明,F-LRMC是梅西大学足球排名综合指数跟踪的众多排名系统中最好的。
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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