Clustering students' open-ended questionnaire answers

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openAccess

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Journal Title

Journal ISSN

Volume Title

D4 Julkaistu kehittämis- tai tutkimusraportti tai -selvitys

Date

2018

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Mcode

Degree programme

Language

en

Pages

13

Series

Abstract

Open responses form a rich but underused source of information in educational data mining and intelligent tutoring systems. One of the major obstacles is the difficulty of clustering short texts automatically. In this paper, we investigate the problem of clustering free-formed questionnaire answers. We present comparative experiments on clustering ten sets of open responses from course feedback queries in English and Finnish. We also evaluate how well the main topics could be extracted from clusterings with the HITS algorithm. The main result is that, for English data, affinity propagation performed well despite frequent outliers and considerable overlapping between real clusters. However, for Finnish data, the performance was poorer and none of the methods clearly outperformed the others. Similarly, topic extraction was very successful for the English data but only satisfactory for the Finnish data. The most interesting discovery was that stemming could actually deteriorate the clustering quality significantly

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Keywords

clustering, text data, Educational data mining

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Citation

Hämäläinen, W, Joy, M, Berger, F & Huttunen, S 2018 ' Clustering students' open-ended questionnaire answers ' arXiv.org .