ANALYSIS OF THE LIMITATIONS OF MACHINE LEARNING IN PREDICTING SPORTS RESULTS
Abstract
This paper presents an experimental evaluation of the effectiveness of a predictive model based on machine learning
algorithms. The key objective was to analyze the reasons for the discrepancies between predicted and actual results. The results
of the experiments revealed a significant impact of dynamic and unpredictable factors (sudden injuries, changes in composition,
team motivation, weather conditions) on the accuracy of predictions. The main limitations of existing statistical approaches
were systematized and priority areas for further improvement of sports analytics methods were identified. The main result of
the work is the identification of key challenges and justification of the need for new approaches to forecasting in the context of
highly dynamic sporting events.