This work is licensed under the Creative Commons Attribution 4.0 International License.
Burgess, D. J., & Naughton, G. A. (2010). Talent development in adolescent team sports: A review. International journal of sports physiology and performance, 5(1), 103-116.Search in Google Scholar
Rongen, F., McKenna, J., Cobley, S., & Till, K. (2018). Are youth sport talent identification and development systems necessary and healthy?. Sports medicine-open, 4(1), 1-4.Search in Google Scholar
Ribeiro, J., Davids, K., Silva, P., Coutinho, P., Barreira, D., & Garganta, J. (2021). Talent development in sport requires athlete enrichment: contemporary insights from a nonlinear pedagogy and the athletic skills model. Sports Medicine, 51, 1115-1122.Search in Google Scholar
Cumming, S. P., Lloyd, R. S., Oliver, J. L., Eisenmann, J. C., & Malina, R. M. (2017). Bio-banding in sport: applications to competition, talent identification, and strength and conditioning of youth athletes. Strength & Conditioning Journal, 39(2), 34-47.Search in Google Scholar
Arede, J., Esteves, P., Ferreira, A. P., Sampaio, J., & Leite, N. (2019). Jump higher, run faster: effects of diversified sport participation on talent identification and selection in youth basketball. Journal of sports sciences, 37(19), 2220-2227.Search in Google Scholar
Sattorov, A. E., & Saidov, G. K. (2021). Improving the training elements in primary training groups of sports schools. Web of Scientist: International Scientific Research Journal, 2(05), 737-746.Search in Google Scholar
Pickering, C., Kiely, J., Grgic, J., Lucia, A., & Del Coso, J. (2019). Can genetic testing identify talent for sport?. Genes, 10(12), 972.Search in Google Scholar
Islomkhoja, I. (2021). Study Of Student Levels Of Movement Activity And Interest In Physical Training And Sports Teacher Of Faculty Of Physical Culture. Berlin Studies Transnational Journal of Science and Humanities, 1(1.5 Pedagogical sciences).Search in Google Scholar
De Bosscher, V., & De Rycke, J. (2017). Talent development programmes: a retrospective analysis of the age and support services for talented athletes in 15 nations. European Sport Management Quarterly, 17(5), 590-609.Search in Google Scholar
Pruna, R., Miñarro Tribaldos, L., & Bahdur, K. (2018). Player talent identification and development in football. Apunts Sports Medicine, 53(198), 43-46.Search in Google Scholar
Azimxo’jayevich, I. I. J. (2022). Training of Personnel in the Field of Physical Education and Sports. Eurasian Journal of Learning and Academic Teaching, 15, 156-160.Search in Google Scholar
Lingmin, W., Haitao, F., & Xiaoming, B. (2022). The Prevention and Control Mechanism of Sports Risks in Colleges and Universities under the Background of the Integration of Sports and Education. Journal of Environmental and Public Health, 2022.Search in Google Scholar
Goodman, A., Mazerolle, S. M., & Eason, C. M. (2017). Organizational infrastructure in the collegiate athletic training setting, part II: benefits of and barriers in the athletics model. Journal of Athletic Training, 52(1), 23-34.Search in Google Scholar
Johnston, K., Wattie, N., Schorer, J., & Baker, J. (2018). Talent identification in sport: a systematic review. Sports medicine, 48, 97-109.Search in Google Scholar
Den Hartigh, R. J., Hill, Y., & Van Geert, P. L. (2018). The development of talent in sports: A dynamic network approach. Complexity, 2018.Search in Google Scholar
Xun, G., & Suxia, L. (2018). Construction of evaluation system of sports talent training scheme based on data mining. International journal of reasoning-based intelligent systems, 10(2), 128-133.Search in Google Scholar
He, Y., Zhu, C., He, Z., Gu, C., & Cui, J. (2017). Big data oriented root cause identification approach based on axiomatic domain mapping and weighted association rule mining for product infant failure. Computers & Industrial Engineering, 109(jul.), 253-265.Search in Google Scholar
Xu, R. L. F. (2021). Risk prediction and early warning for air traffic controllers’ unsafe acts using association rule mining and random forest. Safety science, 135(1).Search in Google Scholar
Ma, L., Zhou, C., Zhang, J., & Lee, D. (2022). Prediction of axial compressive capacity of cfrp-confined concrete-filled steel tubular short columns based on xgboost algorithm. Engineering structures(Jun.1), 260.Search in Google Scholar