Accesso libero

Research on the construction of evaluation system for high-level scientific and technological talents based on big data analysis

   | 05 dic 2023
INFORMAZIONI SU QUESTO ARTICOLO

Cita

Xu, X., Yao, Z., Deng, L., & Dai, L. (2021). A big-data-based analysis framework and its application in talents and industry research. Science(Oct.1 App. TN.6563), 374. Search in Google Scholar

Huang, Y., & Zhang, L. (2017). An innovative study on the training of internationalized russian talents in higher vocational colleges based on big data technology. Revista de la Facultad de Ingenieria, 32(15), 202-207. Search in Google Scholar

Wei, X. (2021). A classification method of tourism english talents based on feature mining and information fusion technology. Mobile Information Systems. Search in Google Scholar

Altintas, Ilkay, Purawat, Shweta, Amaro, & Rommie, et al. (2017). Biomedical big data training collaborative (bbdtc): an effort to bridge the talent gap in biomedical science and research. Journal of Computational Science. Search in Google Scholar

Chu, T. (2022). Research on college students’ physique testing platform based on big data analysis. Mathematical Problems in Engineering, 2022. Search in Google Scholar

Zheng, Y., & Liu, S. (2020). Bibliometric analysis for talent identification by the subject–author– citation three-dimensional evaluation model in the discipline of physical education. Library Hi Tech, ahead-of-print(ahead-of-print). Search in Google Scholar

Mahmood, A. (2021). Talent competitiveness evaluation of the chongqing intelligent industry based on using the entropy topsis method. Information, 12. Search in Google Scholar

Ma, S. Y. (2020). Intelligent school talent information fusion management and talent training system optimization based on data mining. International Journal of Performability Engineering, 16(12). Search in Google Scholar

Purawat, S., Cowart, C., Amaro, R. E., & Altintas, I. (2017). Biomedical big data training collaborative (bbdtc): an effort to bridge the talent gap in biomedical science and research. Journal of Computational Science, 20. Search in Google Scholar

Chang, D. F., & Chen, C. C. (2019). Mining world talent indicators among oecd economies based on gini index. ICIC Express Letters, 10(11), 971-977. Search in Google Scholar

Wang, Y., Luo, H., & Shi, Y. (2019). Complex network analysis for international talent mobility based on bibliometrics. International Journal of Innovation Science, 11(3), 419-435. Search in Google Scholar

Saling, K. C., & Do, M. D. (2020). Leveraging people analytics for an adaptive complex talent management system. Procedia Computer Science, 168, 105-111. Search in Google Scholar

Song, B., & Ma, Y. (2020). Intelligent school talent information fusion management and talent training system optimization based on data mining. International Journal of Performability Engineering(12), 16. 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

Luo, J., Ding, Y., Liu, J., & Kuang, H. (2021). Research on construction of innovative teaching system of transportation engineering and talent evaluation based on cdio. International Journal of Electrical Engineering Education, 002072092098355. Search in Google Scholar

Hua, J., & Tao, S. (2022). Evaluation algorithm of skilled talents’ quality based on deep belief network model. Journal of Interconnection Networks. Search in Google Scholar

Tai, L., Lv, Z., & Wang, S. (2017). Study on construction of innovative talent cultivation model in colleges and universities based on flipped classroom. Revista de la Facultad de Ingenieria, 32(14), 435-442. Search in Google Scholar

Wei, C. (2021). Research on the effect of english talents gathering based on big data hotspot collection technology. Scientific Programming. Search in Google Scholar

Dai, X., Wu, J., & Yan, L. (2018). A spatial evolutionary study of technological innovation talents’ sticky wages and technological innovation efficiency based on the perspective of sustainable development. Sustainability, 10(11). Search in Google Scholar

Veugelers, R., & Wang, J. (2019). Scientific novelty and technological impact. Research Policy, 48(6), 1362-1372. Search in Google Scholar

Saputra, A., Wang, G., Zhang, J. Z., & Behl, A. (2022). The framework of talent analytics using big data. The TQM Journal(1), 34. Search in Google Scholar

Wang, X. (2017). Construction of talent model for regional english teaching based on linguistic economics analysis. Revista de la Facultad de Ingenieria, 32(9), 521-527. Search in Google Scholar

Yang, Z. (2017). Research on regional talent agglomeration effect and reasonable distribution of performance based on hierarchical regression model in the background of cooperative innovation. Boletin Tecnico/Technical Bulletin, 55(8), 91-98. Search in Google Scholar

Wang, F., Liu, P., & Wang, P. (2021). An evaluation study of rural scientific and technological talents based on todim method with hybrid indicator. Journal of Intelligent and Fuzzy Systems, 40(9), 1-14. Search in Google Scholar

Han, H. G., Chen, Z. Y., Liu, H. X., & Qiao, J. F. (2018). A self-organizing interval type-2 fuzzy-neural-network for modeling nonlinear systems. Neurocomputing, 290. Search in Google Scholar

Salman, A., Al-Hemoud, A., Fakhraldeen, S. A., Al-Nashmi, M., & Chun, S. (2020). Research and development as a moderating variable for sustainable economic performance: the asian, european, and kuwaiti models. Sustainability, 12(18), 7525. Search in Google Scholar

Jun, Chi-Hyuck, Aslam, Muhammad, Rao, & G., et al. (2017). A control chart for multivariate poisson distribution using repetitive sampling. Journal of Applied Statistics. Search in Google Scholar

Han, Y., & Lu, W. (2017). Evolutionary design of nonuniform cellular structures with optimized poisson’s ratio distribution. Materials & design, 141(MAR.), 384–394. Search in Google Scholar

Jiang, H., Zhang, W., & Duan, J. (2020). Location choice of overseas high-level young returned talents in china. Sustainability, 12. Search in Google Scholar

Li, L., Wang, W., & Bian, F. (2021). Application of the big data analysis model in higher education talent training quality evaluation. Complexity. Search in Google Scholar

eISSN:
2444-8656
Lingua:
Inglese
Frequenza di pubblicazione:
Volume Open
Argomenti della rivista:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics