Using machine learning to understand students' gaze patterns on graphing tasks. Invited Paper - Refereed
Publication date
2022-12
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Contribution to conference
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Abstract
Graphs are ubiquitous. Many graphs, including histograms, bar charts, and stacked dotplots, have proven tricky to interpret. Students’ gaze data can indicate students’ interpretation strategies on these graphs. We therefore explore the question: In what way can machine learning quantify differences in students’ gaze data when interpreting two near-identical histograms with graph tasks in between? Our work provides evidence that using machine learning in conjunction with gaze data can provide insight into how students analyze and interpret graphs. This approach also sheds light on the ways in which students may better understand a graph after first being presented with other graph types, including dotplots. We conclude with a model that can accurately differentiate between the first and second time a student solved near-identical histogram tasks.
Keywords
histogram, Statistics education research, machine learning algorithm, random forests, secondary school students, graph tasks, eye-tracking, Education, Statistics and Probability, Artificial Intelligence, Developmental and Educational Psychology, SDG 4 - Quality Education, SDG 9 - Industry, Innovation, and Infrastructure, SDG 10 - Reduced Inequalities
Citation
Lyford, A & Boels, L 2022, 'Using machine learning to understand students' gaze patterns on graphing tasks. Invited Paper - Refereed', Paper presented at 11th International conference on teaching statistics, Rosario, Argentina, 11/09/22 - 16/12/22 pp. 1-6. https://doi.org/10.52041/iase.icots11.T8D2, conference