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  4. Leveraging Learner Errors in Digital Argumentation Learning: How ALure Helps Students Learn from their Mistakes and Write Better Arguments
 

Leveraging Learner Errors in Digital Argumentation Learning: How ALure Helps Students Learn from their Mistakes and Write Better Arguments

URI
https://arbor.bfh.ch/handle/arbor/45955
Version
Identifiers
10.1145/3711023
Date Issued
2025
Author(s)
Neshaei, Seyed Parsa
Tolzin, Antonia
Berkle, Yvonne
Leuchter, Miriam
Leimeister, Jan Marco
Janson, Andreas
Wambsganss, Thiemo
Type
Language
Subjects

argumentation learnin...

writing assistants

learning from errors

natural language proc...

Abstract
Providing argumentation feedback is considered helpful for students preparing to work in collaborative environments, helping them with writing higher-quality argumentative texts. Domain-independent natural language processing (NLP) methods, such as generative models, can utilize learner errors and fallacies in argumentation learning to help students write better argumentative texts. To test this, we collect design requirements, and then design and implement two different versions of our system called ALure to improve the students' argumentation skills. We test how ALure helps students learn argumentation in a university lecture with 305 students and compare the learning gains of the two versions of ALure with a control group using video tutoring. We find and discuss the differences of learning gains in argument structure and fallacies in both groups after using ALure, as well as the control group. Our results shed light on the applicability of computer-supported systems using recent advances in NLP to help students in learning argumentation as a necessary skill for collaborative working settings. CCS Concepts: • Computing methodologies → Natural language processing; • Human-centered computing → Natural language interfaces; Field studies.
DOI
https://doi.org/10.24451/arbor.12415
Publisher DOI
10.1145/3711023
Journal or Serie
Proceedings of the ACM on Human-Computer Interaction
ISSN
2573-0142
Publisher URL
https://dl.acm.org/doi/10.1145/3711023
Organization
Wirtschaft
Volume
9
Issue
2
Publisher
ACM
Submitter
Wambsganss, Thiemo
Citation apa
Neshaei, S. P., Tolzin, A., Berkle, Y., Leuchter, M., Leimeister, J. M., Janson, A., & Wambsganss, T. (2025). Leveraging Learner Errors in Digital Argumentation Learning: How ALure Helps Students Learn from their Mistakes and Write Better Arguments. In Proceedings of the ACM on Human-Computer Interaction (Vol. 9, Issue 2). ACM. https://doi.org/10.24451/arbor.12415
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