Towards Hierarchical Cluster Analysis Heatmaps as Visual Data Analysis of Entire Student Cohort Longitudinal Trajectories and Outcomes from Grade 9 through College

Research on data use and school Early Warning Systems (EWS) notes a central practice of researchers and practitioners is to search for patterns in student data to predict outcomes so schools can support success when students experience challenges. Yet, the domain lacks a means to visualize the rich...

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Published inThe High School journal Vol. 106; no. 1; pp. 5 - 36
Main Authors Bowers, Alex J., Zhao, Yihan, Ho, Eric
Format Journal Article
LanguageEnglish
Published Chapel Hill University of North Carolina Press 22.09.2022
The University of North Carolina Press
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ISSN0018-1498
1534-5157
1534-5157
DOI10.1353/hsj.2022.a906700

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Summary:Research on data use and school Early Warning Systems (EWS) notes a central practice of researchers and practitioners is to search for patterns in student data to predict outcomes so schools can support success when students experience challenges. Yet, the domain lacks a means to visualize the rich longitudinal data that schools collect. Here, we use visual data analytic hierarchical cluster analysis (HCA) heatmaps to pattern and visualize entire longitudinal grading histories of a national sample of n=14,290 students from grade 9 to college in every enrolled subject and year, visualizing 6,728,920 individual datapoints. We provide both the open access code in R and an open-access online tool allowing anyone to upload their data and create a HCA heatmap, providing support for visual data analytic and data science practice for both education researchers and schooling organizations.
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ISSN:0018-1498
1534-5157
1534-5157
DOI:10.1353/hsj.2022.a906700