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ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, Date: 2019/08/04 - 2019/08/08, Location: Alaska

Publication date: 2019-07-25
Pages: 1851 - 1861
ISSN: 978-1-4503-6201-6
Publisher: ACM; New York, NY, USA

Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery and Data Minin

Author:

Decroos, Tom
Bransen, Lotte ; Van Haaren, Jan ; Davis, Jesse

Keywords:

Science & Technology, Technology, Computer Science, Information Systems, Computer Science, Theory & Methods, Computer Science, sports analytics, event stream data, soccer match data, valuing actions, probabilistic classification

Abstract:

Assessing the impact of the individual actions performed by soccer players during games is a crucial aspect of the player recruitment process. Unfortunately, most traditional metrics fall short in addressing this task as they either focus on rare actions like shots and goals alone or fail to account for the context in which the actions occurred. This paper introduces (1) a new language for describing individual player actions on the pitch and (2) a framework for valuing any type of player action based on its impact on the game outcome while accounting for the context in which the action happened. By aggregating soccer players' action values, their total offensive and defensive contributions to their team can be quantified. We show how our approach considers relevant contextual information that traditional player evaluation metrics ignore and present a number of use cases related to scouting and playing style characterization in the 2016/2017 and 2017/2018 seasons in Europe's top competitions.