Skip to content
International Journal of Medicine and Science of Physical Activity and Sport

International Journal of Medicine and Science of Physical Activity and Sport

REVISTA INTERNACIONAL DE MEDICINA Y CIENCIAS DE LA ACTIVIDAD FÍSICA Y EL DEPORTE

Menu
  • Home
  • Browse Issues
    • In Press
    • Current Issue
    • Past Issues
  • Information for Contributors
    • Subject Index
    • Subject Index – clasificación del consejo de europa
    • Subject Index – UNESCO Code
  • Login
  • Register
  • About
    • Editorial Staff
    • Indexation/Indexacion
    • INDICADORES DE CALIDAD / QUALITY
    • Contact us

Article View

UTILIZING MACHINE LEARNING ALGORITHMS TO RESOLVE SPORTS CONTRACT DISPUTES

Issue Volume 24, Number 97, 2024 Articles 
Hongqiao Tian
Power China Construction Group Co., Ltd, 100120, Beijing, China.

Abstract

This study explores the application of machine learning, specifically Support Vector Machine (SVM) models, in resolving sports contract disputes. Text mining techniques, including TF-IDF (Term Frequency-Inverse Document Frequency), were employed to process and extract significant features from unstructured contract dispute judgment documents collected from the China Judgments Online. The dataset encompassed various dispute categories such as athlete and club contract disputes, advertising endorsement disputes, transfer contract disputes, event organization and venue disputes, and copyright disputes. The SVM model, utilizing the nu-SVC variant with an RBF kernel, demonstrated high precision across most categories, effectively handling the high-dimensional and complex nature of legal texts. Key metrics such as precision, recall, and F-measure were used to evaluate model performance. The results highlight the robustness and accuracy of machine learning in classifying and analyzing sports contract disputes, providing a valuable tool for legal professionals to enhance dispute resolution processes. This study underscores the potential of integrating advanced computational techniques with legal analysis to improve the efficiency and effectiveness of resolving contractual conflicts in the sports industry.

Keywords: Sports contract disputes, Machine learning, Support Vector Machine, TF-IDF.
Download PDF

Periodicidad Trimestral/Quartely
Revista multidisciplinar de las Ciencias del Deporte
ISSN: 1577-0354
All journal articles are published in Spanish together with their corresponding translation into English

International Journal of Medicine and Science of Physical Activity and Sport 2025 . Powered by WordPress