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Evaluation and selection of group recommendation strategies for collaborative searching of learning objects

机译:评估和选择协作学习对象的小组推荐策略

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Nowadays, there is a wide variety of e-learning repositories that provide digital resources for education in the form of learning objects. Some of these systems provide recommender systems in order to help users in the search for and selection of the learning objects most appropriate to their individual needs. The search for and recommendation of learning objects are usually viewed as a solitary and individual task. However, a collaborative search can be more effective than an individual search in some situations - for example, when developing a digital course between a group of instructors. The problem of recommending learning objects to a group of users or instructors is much more difficult than the traditional problem of recommending to only one individual. To resolve this problem, this paper proposes a collaborative methodology for searching, selecting, rating and recommending learning objects. Additionally, voting aggregation strategies and meta-learning techniques are used in order to automatically obtain the final ratings without having to reach a consensus between all the instructors. A functional model has been implemented within the DELPHOS hybrid recommender system. Finally, various experiments have been carried out using 50 different groups in order to validate the proposed learning object group recommendation approach. (C) 2015 Published by Elsevier Ltd.
机译:如今,有各种各样的电子学习库,它们以学习对象的形式为教育提供数字资源。这些系统中的一些提供推荐系统,以帮助用户搜索和选择最适合其个人需求的学习对象。对学习对象的搜索和推荐通常被视为一项单独的任务。但是,在某些情况下(例如,在一组教员之间开发数字课程时),协作搜索可能比单独搜索更有效。向一组用户或教师推荐学习对象的问题比仅向一个人推荐的传统问题要困难得多。为了解决这个问题,本文提出了一种用于搜索,选择,评定和推荐学习对象的协作方法。另外,投票汇总策略和元学习技术用于自动获得最终评分,而无需在所有讲师之间达成共识。已在DELPHOS混合推荐系统中实现了功能模型。最后,使用50个不同的组进行了各种实验,以验证所提出的学习对象组推荐方法。 (C)2015由Elsevier Ltd.出版

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