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Data Mining of Undergraduate Course Evaluations
Volume 15, Issue 1 (2016), pp. 85–102
Yuheng Helen JIANG   Sohail Syed JAVAAD   Lukasz GOLAB GOLAB  

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https://doi.org/10.15388/infedu.2016.05
Pub. online: 13 April 2016      Type: Article     

Published
13 April 2016

Abstract

In this paper, we take a new look at the problem of analyzing course evaluations. We examine ten years of undergraduate course evaluations from a large Engineering faculty. To the best of our knowledge, our data set is an order of magnitude larger than those used by previous work on this topic, at over 250,000 student evaluations of over 5,000 courses taught by over 2,000 distinct instructors. We build linear regression models to study the factors affecting course and instructor appraisals, and we perform a novel information-theoretic study to determine when some classmates rate a course and/or its instructor highly but others poorly. In addition to confirming the results of previous regression studies, we report a number of new observations that can help improve teaching and course quality.

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Keywords
course evaluation entropy regression

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INFORMATICS IN EDUCATION

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