7 research outputs found

    The Question-driven Dashboard: How Can We Design Analytics Interfaces Aligned to Teachers’ Inquiry?

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    One of the ultimate goals of several learning analytics (LA) initiatives is to close the loop and support students’ and teachers’ reflective practices. Although there has been a proliferation of end-user interfaces (often in the form of dashboards), various limitations have already been identified in the literature such as key stakeholders not being involved in their design, little or no account for sense-making needs, and unclear effects on teaching and learning. There has been a recent call for human-centred design practices to create LA interfaces in close collaboration with educational stakeholders to consider the learning design, and their authentic needs and pedagogical intentions. This paper addresses the call by proposing a question-driven LA design approach to ensure that end-user LA interfaces explicitly address teachers’ questions. We illustrate the approach in the context of synchronous online activities, orchestrated by pairs of teachers using audio-visual and text-based tools (namely Zoom and Google Docs). This study led to the design and deployment of an open-source monitoring tool to be used in real-time by teachers when students work collaboratively in breakout rooms, and across learning spaces

    Embedding Data Storytelling into Learning Analytics Interfaces to Enhance Teachers' Classroom Monitoring

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    Teacher-facing dashboards are increasingly used in learning analytics (LA) to monitor learning activities. However, teachers often struggle to interpret the data presented via dashboards. This thesis aims to address this problem by using data storytelling (DS) to effectively guide teachers' attention and help them make sense of the data. The thesis aims to explore how DS can be integrated into LA for online classroom monitoring, the extent to which it supports teachers, how teachers with varying VL interact with DS-embedded dashboards, and its impact on teachers' cognitive load. This thesis focuses on improving teacher support in higher education

    Predictors of Academic Achievement in Blended Learning: the Case of Data Science Minor

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    This paper is dedicated to studying patterns of learning behavior in connection with educational achievement in multi-year undergraduate Data Science minor specialization for non-STEM students. We focus on analyzing predictors of aca-demic achievement in blended learning taking into account factors related to initial mathematics knowledge, specific traits of educational programs, online and of-fline learning engagement, and connections with peers. Robust Linear Regression and non-parametric statistical tests reveal a significant gap in achievement of the students from different educational programs. Achievement is not related to the communication on Q&A forum, while peers do have effect on academic success: being better than nominated friends, as well as having friends among Teaching Assistants, boosts academic achievement

    Predictors of Academic Achievement in Blended Learning: the Case of Data Science Minor

    No full text
    This paper is dedicated to studying patterns of learning behavior in connection with educational achievement in multi-year undergraduate Data Science minor specialization for non-STEM students. We focus on analyzing predictors of aca-demic achievement in blended learning taking into account factors related to initial mathematics knowledge, specific traits of educational programs, online and of-fline learning engagement, and connections with peers. Robust Linear Regression and non-parametric statistical tests reveal a significant gap in achievement of the students from different educational programs. Achievement is not related to the communication on Q&A forum, while peers do have effect on academic success: being better than nominated friends, as well as having friends among Teaching Assistants, boosts academic achievement

    Predictors of Academic Achievement in Blended Learning: the Case of Data Science Minor

    No full text
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