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Which Algorithms Suit Which Learning Environments? A Comparative Study of Recommender Systems in TEL

机译:哪种算法适合哪种学习环境? TEL中推荐系统的比较研究

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In recent years, a number of recommendation algorithms have been proposed to help learners find suitable learning resources online. Next to user-centered evaluations, offline-datasets have been used to investigate new recommendation algorithms or variations of collaborative filtering approaches. However, a more extensive study comparing a variety of recommendation strategies on multiple TEL datasets is missing. In this work, we contribute with a data-driven study of recommendation strategies in TEL to shed light on their suitability for TEL datasets. To that end, we evaluate six state-of-the-art recommendation algorithms for tag and resource recommendations on six empirical datasets: a dataset from European Schoolnets TravelWell, a dataset from the MACE portal, which features access to meta-data-enriched learning resources from the field of architecture, two datasets from the social bookmarking systems BibSonomy and CiteULike, a MOOC dataset from the KDD challenge 2015, and Aposdle, a small-scale workplace learning dataset. We highlight strengths and shortcomings of the discussed recommendation algorithms and their applicability to the TEL datasets. Our results demonstrate that the performance of the algorithms strongly depends on the properties and characteristics of the particular dataset. However, we also find a strong correlation between the average number of users per resource and the algorithm performance. A tag recommender evaluation experiment reveals that a hybrid combination of a cognitive-inspired and a popularity-based approach consistently performs best on all TEL datasets we utilized in our study.
机译:近年来,已经提出了许多推荐算法来帮助学习者在线找到合适的学习资源。除了以用户为中心的评估之外,离线数据集已用于研究新的推荐算法或协作过滤方法的变体。但是,缺少在多个TEL数据集上比较各种推荐策略的更广泛的研究。在这项工作中,我们为TEL推荐策略的数据驱动研究做出了贡献,以阐明它们对TEL数据集的适用性。为此,我们评估了六个经验数据集上用于标记和资源推荐的六种最新推荐算法:欧洲Schoolnets TravelWell的数据集,MACE门户的数据集,该数据集的特点是可以访问富含元数据的学习来自建筑领域的资源,来自社会书签系统BibSonomy和CiteULike的两个数据集(来自KDD Challenge 2015的MOOC数据集)以及小型工作场所学习数据集Aposdle。我们重点介绍了所讨论的推荐算法的优缺点及其在TEL数据集中的适用性。我们的结果表明,算法的性能在很大程度上取决于特定数据集的属性和特征。但是,我们还发现每个资源的平均用户数与算法性能之间存在很强的相关性。标签推荐者评估实验表明,在我们研究中使用的所有TEL数据集上,认知启发式方法和基于流行度的方法的混合组合始终表现最佳。

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