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Multifactorial analysis of factors influencing elite australian football match outcomes: a machine learning approach
Author(s) -
Jack FaheyGilmour,
B. Dawson,
Peter Peeling,
Jarryd Heasman,
Brent Rogalski
Publication year - 2019
Publication title -
international journal of computer science in sport
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.323
H-Index - 9
ISSN - 1684-4769
DOI - 10.2478/ijcss-2019-0020
Subject(s) - football , hierarchy , league , feature selection , computer science , set (abstract data type) , machine learning , test (biology) , artificial intelligence , statistics , econometrics , mathematics , economics , geography , paleontology , physics , archaeology , astronomy , market economy , biology , programming language
In Australian football (AF), few studies have assessed combinations of pre- game factors and their relation to game outcomes (win/loss) in multivariable analyses. Further, previous research has mostly been confined to association-based linear approaches and post-game prediction, with limited assessment of predictive machine learning (ML) models in a pre-game setting. Therefore, our aim was to use ML techniques to predict game outcomes and produce a hierarchy of important (win/loss) variables. A total of 152 variables (79 absolute and 73 differentials) were used from the 2013–2018 Australian Football League (AFL) seasons. Various ML models were trained (cross-validation) on the 2013–2017 seasons with the–2018 season used as an independent test set. Model performance varied (66.5-73.3% test set accuracy), although the best model (glmnet – 73.3%) rivalled bookmaker predictions in the same period (70.9%). The glmnet model revealed measures of team quality (a player-based rating and a team-based) in their relative form as the most important variables for prediction. Models that contained in-built feature selection or could model non-linear relationships generally performed better. These findings show that AFL game outcomes can be predicted using ML methods and provide a hierarchy of predictors that maximize the chance of winning.

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