Identification of high-performance volleyball players from anthropometric variables and psychological readiness: A machine-learning approach

Modern indoor volleyball has evolved into a high-level strength sport and is seen as one of the most popular open-skilled team sports. The nature of the sport as an open-based skill requires players to have a high degree of both psychological skill and physical ability to cope with the sport`s externally and internally induced pace. The purposes of this study were to examine the essential basic anthropometric variables, as well as competition and practice psychological readiness, that could provide a performance edge and identify high and low-performance players based on the parameters. The anthropometric variables of height, weight, and age were assessed, while the test for performance strategies instrument was used to evaluate competition and practice psychological readiness skills of the players. The players` performances were analyzed in real-time during a volleyball tournament. The Louvain clustering algorithm was used to determine the performance class of the players with reference to the variables evaluated. A total of 45 players were ascertained as high-performance volleyball players (HVP), while 20 players were deemed as low-performance volleyball players (LVP) via the clustering analysis technique. The logistic regression classifier was used to classify the performance of the players. Nonetheless, owing to the skewed representation between the HVP and LVP during the training of the model, the Synthetic Minority Oversampling TEchnique (SMOTE) was employed to artificially increase the minority class dataset to avoid the overfitting notion upon classification. It was shown from the study that, through the machine learning pipeline developed, an excellent identification of the HVP and LVP could be attained. The findings could be invaluable to coaches and other relevant stakeholders in team preparation and the selection of high-performance players in volleyball.
© Copyright 2023 Proceedings of the Institution of Mechanical Engineers, Part P: Journal of Sports Engineering and Technology. SAGE Publications. Kaikki oikeudet pidätetään.

Aiheet: lentopallo antropometria urheilupsykologia suorituskyky parametri
Aihealueet: urheilukilpailut yhteiskuntatieteet biologiset ja lääketieteelliset tieteet
Tagging: maschinelles Lernen Algorithmus Clusteranalyse Identifikation
DOI: 10.1177/17543371211045451
Julkaisussa: Proceedings of the Institution of Mechanical Engineers, Part P: Journal of Sports Engineering and Technology
Julkaistu: 2023
Vuosikerta: 237
Numero: 4
Sivuja: 317-324
Julkaisutyypit: artikkeli
Kieli: englanti (kieli)
Taso: kehittynyt