A Recommender System For Open Educational Videos Based On Skill
Requirements
- URL: http://arxiv.org/abs/2005.10595v1
- Date: Thu, 21 May 2020 12:12:47 GMT
- Title: A Recommender System For Open Educational Videos Based On Skill
Requirements
- Authors: Mohammadreza Tavakoli, Sherzod Hakimov, Ralph Ewerth, G\'abor
Kismih\'ok
- Abstract summary: We suggest a novel method to help learners find relevant open educational videos to master skills demanded on the labour market.
We have built a prototype, which applies text classification and text mining methods on job vacancy announcements to match jobs and their required skills.
More than 250 videos were recommended, and 82.8% of these recommendations were treated as useful by the interviewees.
- Score: 8.595270610973586
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In this paper, we suggest a novel method to help learners find relevant open
educational videos to master skills demanded on the labour market. We have
built a prototype, which 1) applies text classification and text mining methods
on job vacancy announcements to match jobs and their required skills; 2)
predicts the quality of videos; and 3) creates an open educational video
recommender system to suggest personalized learning content to learners.
For the first evaluation of this prototype we focused on the area of data
science related jobs. Our prototype was evaluated by in-depth, semi-structured
interviews. 15 subject matter experts provided feedback to assess how our
recommender prototype performs in terms of its objectives, logic, and
contribution to learning. More than 250 videos were recommended, and 82.8% of
these recommendations were treated as useful by the interviewees. Moreover,
interviews revealed that our personalized video recommender system, has the
potential to improve the learning experience.
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