Authors
Sein Minn, Michel C Desmarais, ShunKai Fu
Publication date
2016
Conference
Adaptive and Adaptable Learning: 11th European Conference on Technology Enhanced Learning, EC-TEL 2016, Lyon, France, September 13-16, 2016, Proceedings 11
Pages
165-178
Publisher
Springer International Publishing
Description
There are numerous algorithms and tools to help an expert map exercises and tasks to underlying skills. The last decade has witnessed a wealth of data driven approaches aiming to refine expert-defined mappings of tasks to skill. This refinement can be seen as a classification problem: for each possible mapping of task to skill, the classifier has to decide whether the expert’s advice is correct, or incorrect. Whereas most algorithms are working at the level of individual mappings, we introduce an approach based on a multi-label classification algorithm that is trained on the mapping of a task to all skills simultaneously. The approach is shown to outperform the existing task to skill mapping refinement techniques.
Total citations
202020212022212
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