Explainable expected goal models for performance analysis in football
analytics
- URL: http://arxiv.org/abs/2206.07212v1
- Date: Tue, 14 Jun 2022 23:56:03 GMT
- Title: Explainable expected goal models for performance analysis in football
analytics
- Authors: Mustafa Cavus and Przemys{\l}aw Biecek
- Abstract summary: This paper proposes an accurate expected goal model trained consisting of 315,430 shots from seven seasons between 2014-15 and 2020-21 of the top-five European football leagues.
To best of our knowledge, this is the first paper that demonstrates a practical application of an explainable artificial intelligence tool aggregated profiles.
- Score: 5.802346990263708
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The expected goal provides a more representative measure of the team and
player performance which also suit the low-scoring nature of football instead
of score in modern football. The score of a match involves randomness and often
may not represent the performance of the teams and players, therefore it has
been popular to use the alternative statistics in recent years such as shots on
target, ball possessions, and drills. To measure the probability of a shot
being a goal by the expected goal, several features are used to train an
expected goal model which is based on the event and tracking football data. The
selection of these features, the size and date of the data, and the model which
are used as the parameters that may affect the performance of the model. Using
black-box machine learning models for increasing the predictive performance of
the model decreases its interpretability that causes the loss of information
that can be gathered from the model. This paper proposes an accurate expected
goal model trained consisting of 315,430 shots from seven seasons between
2014-15 and 2020-21 of the top-five European football leagues. Moreover, this
model is explained by using explainable artificial intelligence tool to obtain
an explainable expected goal model for evaluating a team or player performance.
To best of our knowledge, this is the first paper that demonstrates a practical
application of an explainable artificial intelligence tool aggregated profiles
to explain a group of observations on an accurate expected goal model for
monitoring the team and player performance. Moreover, these methods can be
generalized to other sports branches.
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