4.7 Article

Adaptive learning path recommender approach using auxiliary learning objects

Journal

COMPUTERS & EDUCATION
Volume 147, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compedu.2019.103777

Keywords

Long Term Goal Recommenders (LTRS); Learning path; Item Response Theory (IRT); Matrix Factorization (MF); Recommendation Systems (RS); Auxiliary learning objects; e-learning

Funding

  1. Fundacao para a Ciencia e a Tecnologia (FCT), Portugal [UID/CEC/50021/2019]
  2. project GameCourse, Portugal [PTDC/CCI-CIF/30754/2017]
  3. Fundação para a Ciência e a Tecnologia [PTDC/CCI-CIF/30754/2017] Funding Source: FCT

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In e-learning, one of the main difficulties is recommending learning materials that users can complete on time. It becomes more challenging when users cannot devote enough time to learn the entire course. In this paper, we describe two approaches to maximize users' scores for a course while satisfying their time constraints. These approaches recommend successful paths based on the available time and knowledge background of users. We first briefly explain a method that has a similar goal to our method, and highlight its drawbacks. We then describe our proposal, which works based on a two-layered course graph (lesson and Learning Object (LO) layers; a lesson includes a few LO). Initially, our method uses the Depth First Search algorithm (DFS) to find all lesson sequences in the graph that start by a lesson (opted by a user). It then assigns LO for lessons of paths and estimates their score and time. Finally, a path that satisfies the user's limited time while maximizing his/her score is recommended lesson by lesson. During a path recommendation, if the user could not get the estimated score from a lesson, our method recommends auxiliary LO for that lesson. To evaluate our method, we first assessed the quality of our estimation methods and then evaluate our recommender in a live environment. Results show that our estimation methods outperformed the ones in the literature. Results also present within the same amount of time, the users of our recommender proceeded more on the course than the users of another e-learning system.

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