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머신러닝 분류 모형을 이용한 FIBA 여자농구 아시안컵 대회의 승패 예측 및 요인 분석에 관한 연구A Study on Prediction and Factor Analysis of FIBA Women"s Basketball Asian Cup Competition Using Machine Learning Classification Model

Other Titles
A Study on Prediction and Factor Analysis of FIBA Women"s Basketball Asian Cup Competition Using Machine Learning Classification Model
Authors
예원진이성노
Issue Date
Oct-2022
Publisher
한국체육과학회
Keywords
Machine Learning; Women's Basketball Asian Cup; Prediction; Victory/Loss Factor
Citation
한국체육과학회지, v.31, no.5, pp 1009 - 1021
Pages
13
Indexed
KCI
Journal Title
한국체육과학회지
Volume
31
Number
5
Start Page
1009
End Page
1021
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/185598
DOI
10.35159/kjss.2022.10.31.5.1009
ISSN
1226-0258
Abstract
data and machine learning classification models using the box scores of the 2015-2021 women's basketball Asian Cup tournament. The subject of this study was a total of 200 game records among the records obtained through the official records of the 2015, 2017, 2019, and 2021 Women's Basketball Asian Cup tournaments, and a total of 22 variables were used to predict win/loss results and analyze win/loss factors. In order to predict the win/loss result of the Women's Basketball Asian Cup competition, five machine learning classification models are used, KNN, Decision Tree, SVM, Logistic Regression, and Random Forest, and predictive performance by model by predicting win/loss results. were comparatively analyzed. In addition, in order to analyze the factors affecting win/loss, the importance of each factor was analyzed using a random forest classification model. First, when analyzing factors affecting win/loss using box score data, it was considered that total score and efficiency factors should be removed before analysis in order to obtain more accurate factor importance. Second, in the analysis of factors affecting victory and defeat after cleaning dirty data, the number of successful shots (FGM) was found to be the most important factor, followed by the shot success rate (FG%), the two-point success rate (2PTS%), and personal fouls (PF),interception (STL), and so on. Third, in predicting win-loss results, the logistic regression model showed optimal prediction performance than the KNN, decision tree, SVM, and random forest models, and showed 95% prediction accuracy and 0.95 F1 score.
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