Machine learning in football betting: Prediction of match results based on player characteristics

Stübinger J, Mangold B, Knoll J (2020)


Publication Type: Journal article

Publication year: 2020

Journal

Book Volume: 10

Article Number: 46

Journal Issue: 1

DOI: 10.3390/app10010046

Abstract

In recent times, football (soccer) has aroused an increasing amount of attention across continents and entered unexpected dimensions. In this course, the number of bookmakers, who offer the opportunity to bet on the outcome of football games, expanded enormously, which was further strengthened by the development of the world wide web. In this context, one could generate positive returns over time by betting based on a strategy which successfully identifies overvalued a betting odds. Due to the large number of matches around the globe, football matches in particular have great potential for such a betting strategy. This paper utilizes machine learning to forecast the outcome of football games based on match and player attributes. A simulation study which includes all matches of the five greatest European football leagues and the corresponding second leagues between 2006 and 2018 revealed that an ensemble strategy achieves statistically and economically significant returns of 1.58% per match. Furthermore, the combination of different machine learning algorithms could neither be outperformed by the individual machine learning approaches nor by a linear regression model or naive betting strategies, such as always betting on the victory of the home team.

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How to cite

APA:

Stübinger, J., Mangold, B., & Knoll, J. (2020). Machine learning in football betting: Prediction of match results based on player characteristics. Applied Sciences, 10(1). https://doi.org/10.3390/app10010046

MLA:

Stübinger, Johannes, Benedikt Mangold, and Julian Knoll. "Machine learning in football betting: Prediction of match results based on player characteristics." Applied Sciences 10.1 (2020).

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