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Automated Code Extraction from Discussion Board Text Dataset

International Conference on Quantitative Ethnography (ICQE), 2022
31 October 2022
Sina Mahdipour Saravani
Sadaf Ghaffari
Yanye Luther
James Folkestad
Marcia Moraes
ArXiv (abs)PDFHTML
Abstract

This study introduces and investigates the capabilities of three different text mining approaches, namely Latent Semantic Analysis, Latent Dirichlet Analysis, and Clustering Word Vectors, for automating code extraction from a relatively small discussion board dataset. We compare the outputs of each algorithm with a previous dataset that was manually coded by two human raters. The results show that even with a relatively small dataset, automated approaches can be an asset to course instructors by extracting some of the discussion codes, which can be used in Epistemic Network Analysis.

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