2024
DOI: 10.1371/journal.pone.0303960
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Using machine learning to determine the nationalities of the fastest 100-mile ultra-marathoners and identify top racing events

Beat Knechtle,
Katja Weiss,
David Valero
et al.

Abstract: The present study intended to determine the nationality of the fastest 100-mile ultra-marathoners and the country/events where the fastest 100-mile races are held. A machine learning model based on the XG Boost algorithm was built to predict the running speed from the athlete’s age (Age group), gender (Gender), country of origin (Athlete country) and where the race occurred (Event country). Model explainability tools were then used to investigate how each independent variable influenced the predicted running s… Show more

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