Aggregating social and usage datasets for learning analytics: data-oriented challenges

K. Niemann, M. Wolpers, Giannis Stoitsis, Georgios Chinis, N. Manouselis
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引用次数: 18

Abstract

Recent work has studied real-life social and usage datasets from educational applications, highlighting the opportunity to combine or merge them. It is expected that being able to put together different datasets from various applications will make it possible to support learning analytics of a much larger scale and across different contexts. We examine how this can be achieved from a practical perspective by carrying out a study that focuses on three real datasets. More specifically, we combine social data that has been collected from the users of three learning portals and reflect on how they should be handled. We start by studying the data types and formats that these portals use to represent and store social and usage data. Then we develop crosswalks between the different schemas, so that merged versions of the source datasets may be created. The results of this bottom-up, hands-on investigation reveal several interesting issues that need to be overcome before aggregated sets of social and usage data can be actually used to support learning analytics research or services.
为学习分析聚合社会和使用数据集:面向数据的挑战
最近的工作研究了来自教育应用程序的现实生活中的社交和使用数据集,强调了将它们组合或合并的机会。预计能够将来自不同应用程序的不同数据集放在一起,将使支持更大规模和跨不同上下文的学习分析成为可能。我们通过开展一项关注三个真实数据集的研究,从实际的角度来研究如何实现这一点。更具体地说,我们结合了从三个学习门户网站的用户那里收集的社交数据,并反思了应该如何处理这些数据。我们首先研究这些门户用来表示和存储社交和使用数据的数据类型和格式。然后我们开发不同模式之间的交叉通道,这样就可以创建源数据集的合并版本。这种自下而上的实际调查结果揭示了在聚合的社交和使用数据集实际用于支持学习分析研究或服务之前需要克服的几个有趣问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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