TELL ME WHY: DESIGNING LEARNING ANALYTICS DASHBOARDS TO SUPPORT STUDENTS’SENSEMAKING Closing the Learning Analytics Loop through Reflective, Feedback-Driven Dashboard Design
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Date
2025-08-20
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Abstract
Purpose: This thesis, conducted with the i-MASTER project, explores how student-facing learning
analytics dashboards (LADs) can be designed to support students’ sensemaking in relation to their
learning, through contextualizing learning data. Specifically, the designs of student-facing LADs in a
simulation-based maritime communication case were explored. Addressing a gap in pedagogically
grounded learning analytics research, the study contributes to educational design-based learning
analytics as well as maritime communication research. It further provides tangible prototype designs
of contextualized LAD features.
Theory: The theoretical foundation for this thesis builds on human-centered learning analytics, which
emphasizes student agency and the importance of pedagogically informed design. To conceptualize
these core commitments, Educational Data Storytelling is applied as a design and analytical
framework to contextualize learning analytics through narrative elements.
Method: A participatory design-based research design was employed. First, unstructured classroom
observations and design workshops with maritime instructors were conducted to uncover key features
of the simulation-based learning design. Based on these insights, a digital prototype of a multi-modal
learning analytics dashboard, including contextualized elements, was developed. The prototype was
evaluated through an expert review involving learning science and educational technology researchers.
Results: The findings suggest that a narrative learning analytics dashboard design aligns well with the
existing pedagogical structure of simulation-based maritime education and training, making
educational data storytelling a promising approach for this field. Observed feedback practices emerged
as a crucial source for contextualizing learning analytics, though integrating domain-specific
regulations requires a more mindful approach. The expert evaluation highlighted the pedagogical
value of self-assessment features, detailed explanations, and delayed data access, as these elements
promote student reflection and promise to improve students’ sensemaking in relation to their learning.
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Keywords
Multimodal Learning Analytics, Human-centered Learning Analytics, Contextualized Learning Analytics, Educational Data Storytelling, Feedback, Maritime Education and Training, Explanatory Dashboards, Sensemaking, Maritime English