A Random Forest clustering to explore the influence of physical fitness level of youth basketball players on match-related physical performance

Author:

Marqués-Jiménez Diego1ORCID,Raya-González Javier2ORCID,Sánchez-Díaz Silvia3,Castillo Daniel1ORCID

Affiliation:

1. Valoración del Rendimiento Deportivo, Actividad Física y Salud y Lesiones Deportivas (REDAFLED), Department of Didactics of Musical, Plastic and Corporal Expression, Faculty of Education, University of Valladolid, Soria, Spain

2. Faculty of Sport Sciences, University of Extremadura, Cáceres, Spain

3. Department of Education and Humanities, European University of Madrid, Madrid, Spain

Abstract

This study aimed to analyse the influence of different physical fitness levels of youth basketball players on match-related physical performance, using Random Forest clustering to distinguish between high-fitness level players and low-fitness level players. Twenty male youth basketball players completed the following physical performance tests in two separate sessions: bilateral and unilateral countermovement jumps, bilateral and unilateral horizontal jumps, single leg lateral jumps, the 20 m linear straight sprint test, the 505 test and a repeated sprint ability test. 1 week after the second testing day, players completed a simulated match while external loads were monitored using an ultra-wide band-based Local Positioning System. A Random Forest clustering was used to create two different clusters composed of players with similar physical fitness attributes (high- and low-fitness level players). Results indicate that the Random Forest clustering adequately discriminated among the players in different groups according to their physical fitness attributes. High-fitness level players covered more distance per min in all intensity thresholds and reached higher maximal speed and acceleration intensity during the simulated matches ( p < 0.05). These results may assist basketball practitioners in understanding running performance variations during matches and can be used to optimise preparation for individual players.

Funder

“La Caixa” Foundation and Caja de Burgos

Spanish Ministry of Science and Innovation, State Research Agency (AEI), European Union

Publisher

SAGE Publications

Subject

General Engineering

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