Journal of Information Processing
Online ISSN : 1882-6652
ISSN-L : 1882-6652
Curriculum Analysis of Computer Science Departments by Simplified, Supervised LDA
Yoshitatsu MatsudaTakayuki SekiyaKazunori Yamaguchi
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2018 Volume 26 Pages 497-508

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Abstract

The design of appropriate curricula is one of the most important issues in higher educational institutions, and there are many features to be considered. In this paper, the two key features (“locality bias” and “combination of two simple factors”) were discovered by investigating the actual computer science (CS) curricula of the top-ranked universities on the basis of Computer Science Curricula 2013 (CS2013), where the CS topics are classified into the 18 Knowledge Areas (KAs). We applied a machine learning method named simplified, supervised latent Dirichlet allocation (ssLDA) to the actual syllabi of the CS departments of the 47 top-ranked universities. ssLDA estimates the relative weights of the KAs of CS2013 in each syllabus. Then, each CS department was characterized as the averaged weights of the KAs over its included syllabi. We applied the three well-known data analysis methods (hierarchical cluster analysis, principle component analysis, and non-negative matrix factorization) to the averaged weights of each department and found the above two key features quantitatively and objectively.

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© 2018 by the Information Processing Society of Japan
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