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Chaplot, Devendra Singh; Yang, Yiming; Carbonell, Jaime; Koedinger, Kenneth R. – International Educational Data Mining Society, 2016
With the growing popularity of MOOCs and sharp trend of digitalizing education, there is a huge amount of free digital educational material on the web along with the activity logs of large number of participating students. However, this data is largely unstructured and there is hardly any information about the relationship between material from…
Descriptors: Graphs, Automation, Instructional Materials, Data
Thomas, Pete; Smith, Neil; Waugh, Kevin – Learning, Media and Technology, 2008
To date there has been very little work on the machine understanding of imprecise diagrams, such as diagrams drawn by students in response to assessment questions. Imprecise diagrams exhibit faults such as missing, extraneous and incorrectly formed elements. The semantics of imprecise diagrams are difficult to determine. While there have been…
Descriptors: Feedback (Response), Semantics, Computer Software, Grading

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