DocumentCode
743830
Title
Uncertainty Representation in Visualizations of Learning Analytics for Learners: Current Approaches and Opportunities
Author
Demmans Epp, Carrie ; Bull, Susan
Author_Institution
Department of Computer Science at the University of Toronto, 3302-10 King´s College Road, Toronto, ON, Canada
Volume
8
Issue
3
fYear
2015
Firstpage
242
Lastpage
260
Abstract
Adding uncertainty information to visualizations is becoming increasingly common across domains since its addition helps ensure that informed decisions are made. This work has shown the difficulty that is inherent to representing uncertainty. Moreover, the representation of uncertainty has yet to be thoroughly explored in educational domains even though visualizations are often used in educational reporting. We analyzed 50 uncertainty-augmented visualizations from various disciplines to map out how uncertainty has been represented. We then analyzed 106 visualizations from educational reporting systems where the learner can see the visualization; these visualizations provide learners with information about several factors including their knowledge, performance, and abilities. This analysis mapped the design space that has been employed to communicate a learner´s abilities, knowledge, and interests. It also revealed several opportunities for the inclusion of uncertainty information within visualizations of educational data. We describe how uncertainty information can be added to visualizations of educational data and illustrate these opportunities by augmenting several of the types of visualizations that are found in existing learning analytics reports. The definition of this design space, based on a survey of the literature, will enable the systematic exploration of how different design decisions affect learner trust, understanding, and decision making.
Keywords
Analytical models; Color; Data visualization; Shape; Training; Uncertainty; Visualization; Open learner models; educational reporting; learning analytics; learning dashboards; open learner models; uncertainty; visual analytics;
fLanguage
English
Journal_Title
Learning Technologies, IEEE Transactions on
Publisher
ieee
ISSN
1939-1382
Type
jour
DOI
10.1109/TLT.2015.2411604
Filename
7058341
Link To Document