Generating educational Assessment Items from Linked Open Data: the Case of DBpedia
نویسنده
چکیده
This work uses Linked Open Data for the generation of educational assessment items. We describe the streamline to create variables and populate simple choice item models using the IMS-QTI standard. The generated items were then imported in an assessment platform. Five item models were tested. They allowed identifying the main challenges to improve the usability of Linked Data sources to support the generation of formative assessment items, in particular data quality issues and the identification of relevant sub-graphs for the generation of item variables.
منابع مشابه
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