Title :
Visualizing Student Histories Using Clustering and Composition
Author :
Trimm, David ; Rheingans, Penny ; DesJardins, Marie
Author_Institution :
Univ. of Maryland, Baltimore County (UMBC), Baltimore, MD, USA
Abstract :
While intuitive time-series visualizations exist for common datasets, student course history data is difficult to represent using traditional visualization techniques due its concurrent nature. A visual composition process is developed and applied to reveal trends across various groupings. By working closely with educators, analytic strategies and techniques are developed to leverage the visualization composition to reveal unknown trends in the data. Furthermore, clustering algorithms are developed to group common course-grade histories for further analysis. Lastly, variations of the composition process are implemented to reveal subtle differences in the underlying data. These analytic tools and techniques enabled educators to confirm expected trends and to discover new ones.
Keywords :
data visualisation; history; pattern clustering; student experiments; time series; analytic strategies; clustering algorithms; intuitive time-series visualizations; student course history data; student histories visualization; Data visualization; History; Image color analysis; Market research; Trajectory; Clustering; aggregate visualization; student performance analysis; visualization composition;
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
DOI :
10.1109/TVCG.2012.288