Using HeuristicsMiner to Analyze Problem-Solving Processes: Exemplary Use Case of a Productive-Failure Study
Article Status
Published
Authors/contributors
- Hartmann, Christian (Author)
- Rummel, Nikol (Author)
- Bannert, Maria (Author)
Title
Using HeuristicsMiner to Analyze Problem-Solving Processes: Exemplary Use Case of a Productive-Failure Study
Abstract
This paper presents a fine-grained process analysis of 22 students in a classroom-based learning setting. The students engaged (and failed) in problem-solving attempts prior to instruction (i.e., the Productive-Failure approach). We used the HeuristicsMiner algorithm to analyze the data of a quasi-experimental study. The applied algorithm allowed us to investigate temporally structured think-aloud data, to outline productive and unproductive problem-solving strategies. Our analyses and findings demonstrated that HeuristicsMiner enables researchers to effectively mine problem-solving processes and sequences, even for smaller sample sizes, which cannot be done with traditional code-and-count strategies. The limitations of the algorithm, as well as further implications for educational research and practice, are also discussed.
Publication
Journal of Learning Analytics
Volume
9
Issue
2
Pages
66-86
Date
2022-08-09
Journal Abbr
Learning Analytics
ISSN
1929-7750
Short Title
Using HeuristicsMiner to Analyze Problem-Solving Processes
Accessed
12/12/2023, 18:55
Library Catalogue
DOI.org (Crossref)
Extra
Citation Key: hartmann2022
Citation
Hartmann, C., Rummel, N., & Bannert, M. (2022). Using HeuristicsMiner to Analyze Problem-Solving Processes: Exemplary Use Case of a Productive-Failure Study. Journal of Learning Analytics, 9(2), 66–86. https://doi.org/10.18608/jla.2022.7363
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