Analyzing and predicting the career trajectory of male elite junior tennis players: A machine learning approach

(Analyse und Vorhersage der Karriereentwicklung männlicher Elite-Juniorentennisspieler: Ein Ansatz des maschinellen Lernens)

This study explores the intricate dynamics of the Junior-to-Senior (JTS) transition phase in elite tennis. Focusing on challenges faced by young talents, the research aims to unveil factors influencing successful transitions and the role of elite junior tournaments. In a retrospective-predictive analysis, 240 male tennis players from national teams in the World Junior Tennis Finals (2012-2016) were studied. The cleaned dataset (n = 2847) underwent statistical analyses, including Chi-square tests, Cramer`s V, Bayesian approaches, and Multinomial Logistic Regression (MLR). Artificial Intelligence (AI) models, using supervised learning classification, were applied. Results revealed 62.08% elite junior participants in the Association of Tennis Professionals (ATP) database, emphasizing the significance of team nominations and tournament results in predicting ATP status. Inferential and Bayesian statistics confirmed robustness, with MLR highlighting tournament results' importance. The most accurate AI model (2.1) achieved 84.5% testing accuracy and a 0.76 AUC, suggesting practical application. Findings underscore JTS complexities, emphasizing the pivotal roles of participation, national team nominations, and tournament results. The study recommends comprehensive player development programs, urging strategic team selections by national federations and academies. Coaches, stakeholders, and organizations should prioritize monitoring these variables for early talent identification and support. These measures collectively aim to optimize success trajectories, navigating the critical JTS phase in junior tennis players' sporting careers.
© Copyright 2024 10th International scientific conference on kinesiology. Book of abstracts. Veröffentlicht von University of Zagreb, Faculty of Kinesiology. Alle Rechte vorbehalten.

Bibliographische Detailangaben
Schlagworte:
Notationen:Spielsportarten Nachwuchssport
Tagging:maschinelles Lernen künstliche Intelligenz Talentidentifikation
Veröffentlicht in:10th International scientific conference on kinesiology. Book of abstracts
Sprache:Englisch
Veröffentlicht: Zagreb University of Zagreb, Faculty of Kinesiology 2024
Online-Zugang:https://www.kif.unizg.hr/_news/18434/Book%20of%20abstracts.pdf
Seiten:403-406
Dokumentenarten:Artikel
Level:hoch