Using Machine Learning Algorithms for Jumping Distance Prediction of Male Long Jumpers

Author:

UÇAR Murat1,İNCETAŞ Mürsel Ozan2,BAYRAKTAR Işık3,ÇİLLİ Murat4

Affiliation:

1. ISKENDERUN TECHNICAL UNIVERSITY, FACULTY OF BUSINESS ADMINISTRATION, DEPARTMENT OF MANAGEMENT INFORMATION SYSTEMS

2. ALANYA ALAADDIN KEYKUBAT UNIVERSITY, ALANYA CHAMBER OF TRADE AND INDUSTRY VOCATIONAL SCHOOL

3. ALANYA ALAADDIN KEYKUBAT UNIVERSITY, FACULTY OF SPORTS SCIENCE, DEPARTMENT OF COACH TRAINING

4. SAKARYA UNIVERSITY OF APPLIED SCIENCES, FACULTY OF SPORTS SCIENCE, DEPARTMENT OF COACH TRAINING

Abstract

The long jump is defined as an athletic event, and it has also been a standard event in modern Olympic Games. The purpose of the athletes is to make the distance as far as possible from a jumping point. The main purpose of this study was to determine the most successful machine learning algorithm in the prediction of the long jump distance of male athletes. In this paper, we used age and velocity variables for predicting the long jump performance of athletes. During the research, 328 valid jumps belonging to 73 Turkish male athletes were used as data. In determining the most successful algorithm, mean absolute error (MAE), root mean square error (RMSE), Mean Squared Error (MSE), R2 score, Explained Variance Score (EVS), and Mean Squared Logarithmic Error (MSLE) values were taken into consideration. The outcomes of the analysis showed that long jump performance can be determined by chosen independent variables. The 5-fold cross-validation technique was used for the performance evaluation of the models. As a result of the experimental tests, the Gradient Boosting Regression Trees (GBRT) algorithm reached the best result with an MSE value of 0.0865. In this study, it was concluded that the machine learning approach suggested can be used by trainers to determine the long jump performance of male athletes.

Publisher

Journal of Intelligent Systems: Theory and Applications, Harun TASKIN

Subject

General Medicine

Reference31 articles.

1. Açıkada, C., Arıtan, S., & Yazıcıoğlu, M. V. (1993). Balkan Gençler Şampiyonası Uzun Atlama Yaklaşma Koşusunun Analizi. [Analysis of the 1992 Balkan Junior Championship Long Jump Approach Run.]. Atlet Bilim ve Teknoloji Dergisi, 9, pp. 34-40.

2. Bayraktar, I., & Çilli, M. (2018). Estimation of jumping distance using run-up velocity for male long jumpers. Pedagogics, psychology, medical-biological problems of physical training, 22(3), pp. 124-129. https://doi.org/10.15561/18189172.2018.0302

3. Breiman, L. (2001). Random Forests. Machine Learning, 45(1), 5-32. https://doi.org/10.1023/A:1010933404324

4. Bridgett, L. A., Galloway, M., & Linthorne, N. P. (2002). The effect of run-up speed on long jump performance. ISBS-Conference Proceedings Archive.

5. Bridgett, L. A., & Linthorne, N. P. J. J. o. s. s. (2006). Changes in long jump take-off technique with increasingrun-up speed. 24(8), pp. 889-897. https://doi.org/10.1080/02640410500298040

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