Metadata analysis of open educational resources

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Date
2021
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Publisher
New York,NY,United States : Association for Computing Machinery
Abstract

Open Educational Resources (OERs) are openly licensed educational materials that are widely used for learning. Nowadays, many online learning repositories provide millions of OERs. Therefore, it is exceedingly difficult for learners to find the most appropriate OER among these resources. Subsequently, the precise OER metadata is critical for providing high-quality services such as search and recommendation. Moreover, metadata facilitates the process of automatic OER quality control as the continuously increasing number of OERs makes manual quality control extremely difficult. This work uses the metadata of 8,887 OERs to perform an exploratory data analysis on OER metadata. Accordingly, this work proposes metadata-based scoring and prediction models to anticipate the quality of OERs. Based on the results, our analysis demonstrated that OER metadata and OER content qualities are closely related, as we could detect high-quality OERs with an accuracy of 94.6%. Our model was also evaluated on 884 educational videos from Youtube to show its applicability on other educational repositories.

Description
Keywords
Exploratory analysis, Machine learning, Metadata analysis, OER, Open educational resources, Prediction models, Konferenzschrift
Citation
Tavakoli, M., Elias, M., Kismihók, G., & Auer, S. (2021). Metadata analysis of open educational resources (M. Scheffel, ed.). New York,NY,United States : Association for Computing Machinery. https://doi.org//10.1145/3448139.3448208
License
CC BY-NC-SA 4.0 Unported