Comparative Evaluation of Machine Learning Models for Predicting Soccer Injury TypesComparative Evaluation of Machine Learning Models for Predicting Soccer Injury Types
- Other Titles
- Comparative Evaluation of Machine Learning Models for Predicting Soccer Injury Types
- Authors
- Davronbek Malikov; 김재호; 박정규
- Issue Date
- Apr-2024
- Publisher
- 한국산업융합학회
- Keywords
- Soccer; Data Analysis; Soccer Injury Type; Classification Machine Learning Models
- Citation
- 한국산업융합학회논문집, v.27, no.2, pp 257 - 268
- Pages
- 12
- Indexed
- KCI
- Journal Title
- 한국산업융합학회논문집
- Volume
- 27
- Number
- 2
- Start Page
- 257
- End Page
- 268
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/70415
- DOI
- 10.21289/KSIC.2024.27.2.257
- ISSN
- 1226-833x
2765-5415
- Abstract
- Soccer is type of sport that carries a high risk of injury. Injury is not only cause in the unlucky soccer carrier and also team performance as well as financial effects can be worse since soccer is a team-based game. The duration of recovery from a soccer injury typically relies on its type and severity. Therefore, we conduct this research in order to predict the probability of players injury type using machine learning technologies in this paper. Furthermore, we compare different machine learning models to find the best fit model. This paper utilizes various supervised classification machine learning models, including Decision Tree, Random Forest, K-Nearest Neighbors (KNN), and Naive Bayes. Moreover, based on our finding the KNN and Decision models achieved the highest accuracy rates at 70%, surpassing other models.
The Random Forest model followed closely with an accuracy score of 62%. Among the evaluated models, the Naive Bayes model demonstrated the lowest accuracy at 56%. We gathered information about 54 professional soccer players who are playing in the top five European leagues based on their career history. We gathered information about 54 professional soccer players who are playing in the top five European leagues based on their career history.
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Collections - 공학계열 > AI융합공학과 > Journal Articles

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