澳大利亚优秀足球运动员的比赛表现可以预测吗?

J. Fahey-Gilmour, J. Heasman, B. Rogalski, B. Dawson, P. Peeling
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引用次数: 0

摘要

摘要在澳大利亚精英足球(AF)中,许多研究使用各种结果(如球队选择、比赛运行、比赛评分等)调查了个人球员的表现,然而,没有一项研究试图使用赛前因素的组合来预测球员的表现。因此,我们的目的是调查通常报道的个人球员和球队特征预测澳大利亚足球联盟(AFL)个人球员表现的能力,通过官方AFL球员评级(AFLPR)(冠军数据)来衡量。使用2014-2019赛季AFL收集的数据,为一支AFL球队的球员(n=64)得出了158个变量。2014-2018赛季训练了各种机器学习模型(交叉验证),2019赛季用作独立测试集。使用均方根误差(RMSE)评估的模型性能各不相同(4.69-5.03测试集RMSE),但与单一变量预测相比通常较差(AFLPR赛前评级:4.72测试集RMSE.)。模型性能的变化(RMSE:0.14,不包括最差模型)很低,表明不同的方法产生了相似的结果,但glmnet模型略为优越(4.69 RMSE测试集)。这项研究强调了目前收集的赛前变量在比简单的奇异变量基线模型更准确地预测每周比赛表现方面的有限效用。
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Can Elite Australian Football Player’s Game Performance Be Predicted?
Abstract In elite Australian football (AF) many studies have investigated individual player performance using a variety of outcomes (e.g. team selection, game running, game rating etc.), however, none have attempted to predict a player’s performance using combinations of pre-game factors. Therefore, our aim was to investigate the ability of commonly reported individual player and team characteristics to predict individual Australian Football League (AFL) player performance, as measured through the official AFL player rating (AFLPR) (Champion Data). A total of 158 variables were derived for players (n = 64) from one AFL team using data collected during the 2014-2019 AFL seasons. Various machine learning models were trained (cross-validation) on the 2014-2018 seasons, with the 2019 season used as an independent test set. Model performance, assessed using root mean square error (RMSE), varied (4.69-5.03 test set RMSE) but was generally poor when compared to a singular variable prediction (AFLPR pre-game rating: 4.72 test set RMSE). Variation in model performance (range RMSE: 0.14 excusing worst model) was low, indicating different approaches produced similar results, however, glmnet models were marginally superior (4.69 RMSE test set). This research highlights the limited utility of currently collected pre-game variables to predict week-to-week game performance more accurately than simple singular variable baseline models.
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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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