Evaluation of Vocational Education and Training Outcomes Based on Mobile Learning

被引:0
作者
Yu, Yanhua [1 ]
机构
[1] School of Intelligent Manufacturing, Zibo Vocational Institute, Zibo
关键词
attention mechanism; gated recurrent unit model (GRU); mobile learning; outcome evaluation; time series; vocational education;
D O I
10.3991/ijim.v18i19.51575
中图分类号
学科分类号
摘要
With the rapid advancement of information technology (IT), mobile learning has gradually become a significant approach in vocational education and training. University students utilize mobile applications for learning, which not only enhances the flexibility and effi-ciency of their studies but also promotes the equitable distribution of educational resources. However, effectively evaluating the impact of these applications in vocational education and training remains an urgent issue to be addressed. Current study methods predominantly focus on the analysis of static data, which inadequately captures the dynamic changes in students’ learning behaviors. Additionally, traditional predictive models exhibit low accuracy and poor generalization capabilities when handling high-dimensional, nonlinear time-series data. This study proposes an evaluation method for vocational education and training outcomes based on an improved gated recurrent unit (GRU) model, which comprises three main components: decomposition of university students’ mobile application time-series data based on the variable dependence model (VDM), preprocessing of the mobile application data, and outcome evaluation using the improved GRU model. Incorporation of an attention mech-anism enhances the predictive performance of the model, providing data support and a decision-making basis for educators and developers. © 2024, International Federation of Engineering Education Societies (IFEES). All rights reserved.
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页码:156 / 170
页数:14
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共 22 条
  • [1] Snezhko Z., Babaskin D., Vanina E., Rogulin R., Egorova Z., Motivation for mobile learning: Teacher engagement and built-in mechanisms, International Journal of Interactive Mobile Technologies (iJIM), 16, 1, pp. 78-93, (2022)
  • [2] Ul Hassan J., Missen M. M. S., Firdous A., Maham A., Ikram A., An adaptive m-learning usability model for facilitating m-learning for slow learners, International Journal of Interactive Mobile Technologies (iJIM), 17, 19, pp. 48-69, (2023)
  • [3] Bhatia M., Manani P., Garg A., Bhatia S., Adlakha R., Mapping mindset about gam-ification: Teaching learning perspective in UAE education system and Indian education system, Revue d’Intelligence Artificielle, 37, 1, pp. 47-52, (2023)
  • [4] Zulaeha I., Subyantoro, C. Hasanudin, and R. Pristiwati, “Developing teaching materials of academic writing using mobile learning, Ingénierie des Systèmes d’Information, 28, 2, pp. 409-418, (2023)
  • [5] Zhukova O., Mandragelia V., Alieksieienko T., Semenenko A., Skibina E., Digital technologies for introducing gamification into the education system in the context of the development of industry 4.0, Ingénierie des Systèmes d’Information, 28, 1, pp. 141-147, (2023)
  • [6] Adzifome N. S., Agyei D. D., Learning with mobile devices-insights from a university setting in Ghana, Education and Information Technologies, 28, pp. 3381-3399, (2023)
  • [7] Vanitha P. S., Alathur S., An empirical study on mobile-assisted civic and e-learning service through sentiment analysis, International Journal of Mobile Learning and Organisation, 17, 1–2, pp. 227-253, (2023)
  • [8] Sophonhiranrak S., Features, barriers, and influencing factors of mobile learning in higher education: A systematic review, Heliyon, 7, 4, pp. 1-10, (2021)
  • [9] Mashudi N. A., Izhar M. A. M., Aris S. A. M., Human-computer interaction in mobile learning: A review, International Journal of Advanced Computer Science and Applications (IJACSA), 13, 3, pp. 566-574, (2022)
  • [10] Abdullah S. A., Saud M. S., Hisham M. H. M., Establishing mobile learning elements using competency-based education framework, Journal of Technical Education and Training, 13, 1, pp. 102-111, (2021)