Feature Impact Analysis on Top Long-Jump Performances with Quantile Random Forest and Explainable AI Techniques
Qi Gan, Stephan Cl\'emen\c{c}on, Moun\^im A.El-Yacoubi, Sao Mai Nguyen, Eric Fenaux, Ons Jelassi

TL;DR
This paper uses machine learning and explainable AI techniques to identify key biomechanical features influencing top long jump performances, revealing gender-specific technical factors beyond velocity.
Contribution
It introduces a framework combining quantile regression and explainable AI to analyze biomechanical features' impact on elite long jump performance.
Findings
Knee angle before take-off is crucial for male athletes' top performance.
Landing pose and approach technique are critical for female athletes.
Velocity remains an important factor across genders.
Abstract
Biomechanical features have become important indicators for evaluating athletes' techniques. Traditionally, experts propose significant features and evaluate them using physics equations. However, the complexity of the human body and its movements makes it challenging to explicitly analyze the relationships between some features and athletes' final performance. With advancements in modern machine learning and statistics, data analytics methods have gained increasing importance in sports analytics. In this study, we leverage machine learning models to analyze expert-proposed biomechanical features from the finals of long jump competitions in the World Championships. The objectives of the analysis include identifying the most important features contributing to top-performing jumps and exploring the combined effects of these key features. Using quantile regression, we model the…
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