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Labour Market Information Driven, Personalized, OER Recommendation System for Lifelong Learners

机译:劳动力市场信息驱动,个性化,终身学习者推荐系统

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In this paper, we suggest a novel method to aid lifelong learners to access relevant OER based learning content to master skills demanded on the labour market. Our software prototype 1) applies Text Classification and Text Mining methods on vacancy announcements to decompose jobs into meaningful skills components, which lifelong learners should target; and 2) creates a hybrid OER Recommender System to suggest personalized learning content for learners to progress towards their skill targets. For the first evaluation of this prototype we focused on two job areas: Data Scientist, and Mechanical Engineer. We applied our skill extractor approach and provided OER recommendations for learners targeting these jobs. We conducted in-depth, semi-structured interviews with 12 subject matter experts to learn how our prototype performs in terms of its objectives, logic, and contribution to learning. More than 150 recommendations were generated, and 76.9% of these recommendations were treated as useful by the interviewees. Interviews revealed that a personalized OER recommender system, based on skills demanded by labour market, has the potential to improve the learning experience of lifelong learners.
机译:在本文中,我们建议一种新的方法来帮助终身学习者访问基于Oer的相关OER的学习内容,以掌握劳动力市场所需的技能。我们的软件原型1)将文本分类和文本挖掘方法应用于空缺公告,以将职位分解为有意义的技能组成部分,这是终身学习者应该瞄准的; 2)创建一个混合OER推荐制度,以建议学习者的个性化学习内容,以实现他们的技能目标。首先评估此原型,我们专注于两个工作区域:数据科学家和机械工程师。我们应用了技能提取器方法,并为目标工作的学习者提供了OER建议。我们深入了解,有12个主题专家进行了深入的,半结构化访谈,以了解我们的原型如何在其目标,逻辑和学习贡献方面表现。产生了超过150个建议,76.9%的这些建议被受访者视为有用。访谈揭示了一个基于劳动力市场所需技能的个性化OER推荐制度,有可能提高终身学习者的学习经验。

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