This work is licensed under the Creative Commons Attribution 4.0 International License.
Song, J. (2022, July). Application analysis of big data technology in vocational education informatization. In International Conference on Frontier Computing (pp. 895-900). Singapore: Springer Nature Singapore.Search in Google Scholar
Zhang, J. (2022, October). Design of a Decentralized Sharing Platform for Big Data Network-Driven Vocational Education Talent Training. In 2022 International Conference on Edge Computing and Applications (ICECAA) (pp. 160-163). IEEE.Search in Google Scholar
Zeng, W., Kang, S., & Li, B. (2019, May). Application of internet+ big data and artificial intelligence in vocational education. In 2019 4th international conference on information systems engineering (ICISE) (pp. 21-25). IEEE.Search in Google Scholar
Mokhtar, S., Alshboul, J. A., & Shahin, G. O. (2019, December). Towards data-driven education with learning analytics for educator 4.0. In Journal of Physics: Conference Series (Vol. 1339, No. 1, p. 012079). IOP Publishing.Search in Google Scholar
Kang, L. (2024). Revolutionizing Vocational Education: Information-Based Instruction and the Knowledge Economy. Journal of the Knowledge Economy, 1-33.Search in Google Scholar
Chen, Y., Jiang, Y., Zheng, A., Yue, Y., & Hu, Z. H. (2023). What Research Should Vocational Education Colleges Conduct? An Empirical Study Using Data Envelopment Analysis. Sustainability, 15(12), 9220.Search in Google Scholar
Heinze, C., Hartmeyer, R. D., Sidenius, A., Ringgaard, L. W., Bjerregaard, A. L., Krølner, R. F., ... & Klinker, C. D. (2024). Developing and Evaluating a Data-Driven and Systems Approach to Health Promotion Among Vocational Students: Protocol for the Data Health Study. JMIR research protocols, 13(1), e52571.Search in Google Scholar
Zhenyu, C. (2017, December). The application of big data in higher vocational education based on Holland vocational interest theory. In 2017 International Conference on Industrial Informatics-Computing Technology, Intelligent Technology, Industrial Information Integration (ICIICII) (pp. 37-40). IEEE.Search in Google Scholar
Mi, N. D. Q., Giang, D. T. T., & Duy, P. N. (2021, September). Empowering learner autonomy by data-driven career development planning. In AIP Conference Proceedings (Vol. 2406, No. 1). AIP Publishing.Search in Google Scholar
Gaftandzhieva, S., Hussain, S., Hilcenko, S., Doneva, R., & Boykova, K. (2023). Data-driven decision making in higher education institutions: State-of-play. International Journal of Advanced Computer Science and Applications, 14(6), 397-405.Search in Google Scholar
Kayyali, M. (2024). Career Development in Higher Education: Best Practices and Innovations. In Advancing Student Employability Through Higher Education (pp. 1-19). IGI Global.Search in Google Scholar
Nambobi, M., Khan, M. S. H., & Alli, A. A. (2018). Big Data: Prospects and Applications in the technical and Vocational education and training Sector. Data Analytics: Concepts, Techniques, and Applications; CRC Press: Boca Raton, FL, USA, 297-298.Search in Google Scholar
Spada, I., Chiarello, F., Curreli, A., & Fantoni, G. (2022, March). On the link between education and Industry 4.0: a framework for a data-driven education design. In 2022 IEEE Global Engineering Education Conference (EDUCON) (pp. 1670-1677). IEEE.Search in Google Scholar
King, A. (2017). Implementation of Data-Driven Decision Making Professional Development: An Action Research Project with Career and Technical Education Teachers. Wilmington University (Delaware).Search in Google Scholar
Khrapatyi, S., Tokarieva, K., Hlushchenko, O., Paramonova, O., & Lvova, I. (2024). Research on performance evaluation of higher vocational education informatization based on data envelopment analysis. STEM Education, 4(1), 51-70.Search in Google Scholar
Zeide, E. (2017). The structural consequences of big data-driven education. Big Data, 5(2), 164-172.Search in Google Scholar
Bondar, K., Shestopalova, O., Hamaniuk, V., & Tursky, V. (2023, March). Ukraine higher education based on data-driven decision making (DDDM). In CTE Workshop Proceedings (Vol. 10, pp. 346-365).Search in Google Scholar
Gyll, S. P. (2021). Career development by design, not default: Creating a more efficient and data‐driven process by connecting aptitude‐based learner guidance to post‐secondary pathways, competency‐based credentials, and high‐demand jobs. The Journal of Competency‐Based Education, 6(1), e1236.Search in Google Scholar
Gao, T. (2024, January). Research on the Application of Data-Driven Approach to Enhance Comprehensive Literacy in Vocational Education. In NMDME 2023: Proceedings of the 3rd International Conference on New Media Development and Modernized Education, NMDME 2023, October 13–15, 2023, Xi’an, China (p. 441). European Alliance for Innovation.Search in Google Scholar
Huang, L., Boonsong, S., Siramaneerat, I., Sangsawang, T., Sawetmethikul, P., & Chen, R. (2024). A Comprehensive Data-Driven Analysis of Talent Supply using Delphi Method in Higher Vocational Education and Ethnic Minority Regions. Journal of Applied Data Sciences, 5(1), 268-278.Search in Google Scholar
Wang, N., Pasawano, T., Sangsawang, T., & Pigultong, M. (2024). Data-Driven Analysis of Teaching Quality Impact on Graduate Employment in Higher Vocational Colleges of Hefei. Journal of Applied Data Sciences, 5(1), 242-255.Search in Google Scholar
Li, H., Gu, H., Hao, X., Yan, X., & Zhu, Q. (2024). Data-driven analytics for student reviews in China’s higher vocational education MOOCs: A quality improvement perspective. Plos one, 19(3), e0298675.Search in Google Scholar
Fodor, S., Szabó, I., & Ternai, K. (2021). Competence-oriented, data-driven approach for sustainable development in university-level education. Sustainability, 13(17), 9977.Search in Google Scholar
Haochen Tian & Zhiyang Wu. (2024). Research on Comprehensive Evaluation of Business Environment in Central and Eastern Europe Based on Entropy Weight Method. Academic Journal of Business & Management(5).Search in Google Scholar
Fengtai Zhang,Aiyu Xie,Jiawei Zhang,Jing Chen,Peiran Yang,Dalai Ma... & Guochuan Peng. (2024). Dynamic evolution and trend prediction in coupling coordination between urban and rural space utilization efficiency based local and tele-coupling model. Heliyon(11),e31578-.Search in Google Scholar
Tang Qian,Qiu Yuzhuo & Xu Lan. (2024). Forecasting the demand for cold chain logistics of agricultural products with Markov-optimised mean GM (1, 1) model—a case study of Guangxi Province, China. Kybernetes(1),314-336.Search in Google Scholar
Dakuan Xin,Junchao Zhu,Congshuai He & Hongxing Hua. (2024). Low frequency load identification under high noise level using weighted total least squares. Measurement115125-115125.Search in Google Scholar