Optimizing Learning Path Design in Mobile Learning Platforms for Online Courses

Authors

  • Junxiang Wang Shijiazhuang College of Applied Technology, Shijiazhuang, China

DOI:

https://doi.org/10.3991/ijim.v19i01.53407

Keywords:

mobile learning platforms, learning path optimisation, dynamic behaviour prediction, personalised learning, vocational education, multi-label prediction

Abstract


With the rapid advancement of information technology, online education, particularly vocational education, has become a vital avenue for enhancing skills and knowledge. Vocational education necessitates flexible and personalized learning path design to accommodate the diverse needs and behaviors of learners. Mobile learning platforms, as a pivotal form of modern online education, provide learners with the convenience of accessing educational resources anytime and anywhere. However, existing methods for optimizing learning paths exhibit notable limitations, primarily in accurately capturing learners’ dynamic behaviors and in providing personalized and intelligent path design. Therefore, how to optimize learning paths based on learners’ dynamic behavior data has become a research hotspot in academia and educational practice. At present, many studies focus on matching analysis based on students’ static characteristics with course content but overlook learners’ behavioral changes and dynamic needs during the learning process. Traditional recommendation algorithms and rule-based path design methods are difficult to cope with complex learning behaviors and diverse learner needs. This study addresses these limitations by proposing an optimization model for mobile learning path design based on multi-view prediction of dynamic student behaviors. The model extracts mobile interaction features from student groups, constructs a multiple mobile behavior collaborative encoder, and employs multiple task label prediction techniques to achieve personalized and intelligent optimization of learning paths. The results demonstrate that this approach significantly enhances the learning efficiency and experience of learners, offering novel insights and technological support for the path design of mobile learning platforms.

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Published

2025-01-13

How to Cite

Wang, J. (2025). Optimizing Learning Path Design in Mobile Learning Platforms for Online Courses. International Journal of Interactive Mobile Technologies (iJIM), 19(01), pp. 4–17. https://doi.org/10.3991/ijim.v19i01.53407

Issue

Section

Papers