AL: An Adaptive Learning Support System for Argumentation Skills
Author(s) -
Thiemo Wambsganß,
Christiiklaus,
Matthias Cetto,
Matthias Söllner,
Siegfried Handschuh,
Jan Marco Leimeister
Publication year - 2020
Publication title -
alexandria (unisg) (university of st.gallen)
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4503-6708-0
DOI - 10.1145/3313831.3376732
Subject(s) - argumentation theory , computer science , quality (philosophy) , artificial intelligence , adaptive learning , test (biology) , natural language processing , mathematics education , psychology , linguistics , epistemology , philosophy , paleontology , biology
Recent advances in Natural Language Processing (NLP) bear the opportunity to analyze the argumentation quality of texts. This can be leveraged to provide students with individual and adaptive feedback in their personal learning journey. To test if individual feedback on students' argumentation will help them to write more convincing texts, we developed AL, an adaptive IT tool that provides students with feedback on the argumentation structure of a given text. We compared AL with 54 students to a proven argumentation support tool. We found students using AL wrote more convincing texts with better formal quality of argumentation compared to the ones using the traditional approach. The measured technology acceptance provided promising results to use this tool as a feedback application in different learning settings. The results suggest that learning applications based on NLP may have a beneficial use for developing better writing and reasoning for students in traditional learning settings.
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