动作(物理)
心理学
计算机科学
知识管理
数学教育
多媒体
人机交互
教育学
量子力学
物理
作者
Paraskevi Topali,Ruth Cobos,Unai Agirre‐Uribarren,Alejandra Martínez‐Monés,Sara Villagrá‐Sobrino
摘要
Abstract Background Personalised and timely feedback in massive open online courses (MOOCs) is hindered due to the large scale and diverse needs of learners. Learning analytics (LA) can support scalable interventions, however they often lack pedagogical and contextual grounding. Previous research claimed that a human‐centred approach in the design of LA solutions can be beneficial. Yet, there is a scarcity of empirical studies discussing participatory approaches addressing LA for feedback in MOOCs. Paper Objectives We report a human‐centred design, where an instructor and a tool developer employed a conceptual framework, named FeeD4Mi, to shape personalised LA‐informed feedback in a MOOC. Methods The current study follows a qualitative interpretative approach to understand how the proposed conceptual framework FeeD4Mi served the MOOC instructor and the tool developer to design feedback interventions and re‐design an existing LA tool, respectively. Results and Conclusions The results showed that FeeD4Mi helped the tool developer to create a contextualised LA tool, named edX‐LIMS+. edX‐LIMS+ allowed the instructor to monitor and assist struggling MOOC learners in a timely manner. Additionally, FeeD4Mi successfully guided the course instructor in designing and delivering personalised interventions. Yet, the feedback design process was perceived as time‐demanding, an issue we plan to address in our future work. Takeaways The current study extends the existing empirical research about employing human‐centred approaches for the design of LA‐driven interventions. Moreover, this study advances the theory of scalable feedback tactics, through a conceptual framework that aims to guide MOOC instructors during the definition of feedback interventions. We envision that this research contributes to promoting participatory approaches for designing, delivering, and evaluating LA‐informed feedback interventions in authentic contexts.
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