This work is licensed under the Creative Commons Attribution 4.0 International License.
Paula, D., Cunha, R., & Andreoli, C. V. (2021). Health problems of basketball referees:a prospective study. Revista Brasileira de Medicina do Esporte, 27(2), 195-200.Search in Google Scholar
Rogers, M., Crozier, A. J., Schranz, N. K., Eston, R. G., & Tomkinson, G. R. (2022). Player profiling and monitoring in basketball: a delphi study of the most important non-game performance indicators from the perspective of elite athlete coaches. Sports medicine(5), 52.Search in Google Scholar
Nottingham, K. T., Pedersen, K., Xin, Z., Butler, B. A., & Warnick, S. (2018). Supervised machine learning for crowd noise classification at collegiate basketball games. The Journal of the Acoustical Society of America, 144(3), 1829-1829.Search in Google Scholar
Mendes, R. R., Delextrat, A., Almeida, M., & AJF Júnior. (2021). Small-sided games as additional training in elite basketball nonstarters players. Revista Brasileira de Medicina do Esporte, 27(2), 137.Search in Google Scholar
Yang, D. (2018). Experimental research with combination of whole brain teaching and basketball techniques. NeuroQuantology, 16(5).Search in Google Scholar
Toro, E. O., & J Courel-Ibáñez. (2018). Inside game effectiveness in nba basketball: analysis of collective interactions. Kinesiology, 50(2).Search in Google Scholar
Klapprodt, K. L., Fitzgerald, J. S., Short, S. E., Manning, J. T., & Tomkinson, G. R. (2018). Relationships between the digit ratio (2d:4d) and game‐related statistics in professional and semi‐professional male basketball players. American Journal of Human Biology, 30(6).Search in Google Scholar
Castro, A., Goethel, M. F., Vieira, E. R., Moreira, P., & Gonalves, M. (2021). Effects of wearing an ankle brace on ground reaction forces during jumps in basketball game simulation. Revista Brasileira de Medicina do Esporte, 27(2), 218-224.Search in Google Scholar
Hojo, K. (2019). Analysis of factors predicting who obtains a ball in basketball rebounding situations. Nature reviews Cancer, 19(2).Search in Google Scholar
CD Gómez-Carmona, Mancha, D., Ortega, J. P., & SJ Ibáez. (2021). Multi-location external workload profile in women’s basketball players. a case study at the semiprofessional-level. Sensors, 21(13), 4277.Search in Google Scholar
Shi, F., & Hu, X. (2022). Fuzzy dynamic obstacle avoidance algorithm for basketball robot based on multi-sensor data fusion technology. International Journal of Foundations of Computer Science, 33(06n07), 649-666.Search in Google Scholar
Zhao, Y., Yang, R., Chevalier, G., Shah, R. C., & Romijnders, R. (2017). Applying deep bidirectional lstm and mixture density network for basketball trajectory prediction. Optik, 266-272.Search in Google Scholar
Sarlis, V., Chatziilias, V., Tjortjis, C., & Mandalidis, D. (2021). A data science approach analysing the impact of injuries on basketball player and team performance. Information Systems, 99C(1), 16.Search in Google Scholar
Song, X., & Fan, L. (2022). Pattern recognition characteristics and neural mechanism of basketball players’ dribbling tactics based on artificial intelligence and deep learning. Mathematical Problems in Engineering, 2022.Search in Google Scholar
Peng, Y. (2021). Real-time analysis of basketball sports data based on deep learning. Complexity, 2021, 1-11.Search in Google Scholar
Root, Hayley J.Frank, Barnett S.Denegar, Craig R.Casa, Douglas J.Gregorio, David, IMazerolle, Stephanie M.DiStefano, Lindsay J. (2019). Application of a preventive training program implementation framework to youth soccer and basketball organizations. Journal of athletic training, 54(2).Search in Google Scholar
Perez-Sanchez, J. M., Salmeron-Gomez, R., & Ocana-Peinado, F. M. (2018). A bayesian asymmetric logistic model of factors underlying team success in top-level basketball in spain. Stata Neerlandica, 73(1), 22-43.Search in Google Scholar
Tavakol, M., Arjmandi, R., Shayeghi, M., Monavari, S. M., & Karbassi, A. R. (2017). Application of multivariate statistical methods to optimize water quality monitoring network with emphasis on the pollution caused by fish farms. Iranian Journal of Public Health, 46(1), 83.Search in Google Scholar
Eum, A. (2020). Effects of univariate and multivariate statistical downscaling methods on climatic and hydrologic indicators for alberta, canada. Journal of Hydrology, 588(1).Search in Google Scholar
Teramoto, K., & Hirose, K. (2022). Sparse multivariate regression with missing values and its application to the prediction of material properties. International Journal for Numerical Methods in Engineering(2), 123.Search in Google Scholar
Strbova, K., Ruzickova, J., & Raclavska, H. (2019). Application of multivariate statistical analysis using organic compounds: source identification at a local scale (napajedla, czechia). Journal of Environmental Management, 238, 434-441.Search in Google Scholar