ArgueTutor: An Adaptive Dialog-Based Learning System for Argumentation Skills
Author(s) -
Thiemo Wambsganß,
Tobias Kueng,
Matthias Soellner,
Jan Marco Leimeister
Publication year - 2021
Publication title -
alexandria (unisg) (university of st.gallen)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/3411764.3445781
Subject(s) - argumentation theory , dialog box , computer science , quality (philosophy) , dialog system , natural language processing , natural (archaeology) , artificial intelligence , human–computer interaction , mathematics education , psychology , linguistics , world wide web , philosophy , archaeology , epistemology , history
Techniques from Natural-Language-Processing offer the opportunities to design new dialog-based forms of human-computer interaction as well as to analyze the argumentation quality of texts. This can be leveraged to provide students with adaptive tutoring when doing a persuasive writing exercise. To test if individual tutoring for students’ argumentation will help them to write more convincing texts, we developed ArgueTutor, a conversational agent that tutors students with adaptive argumentation feedback in their learning journey. We compared ArgueTutor with 55 students to a traditional writing tool. We found students using ArgueTutor wrote more convincing texts with a better quality of argumentation compared to the ones using the alternative approach. The measured level of enjoyment and ease of use provides promising results to use our tool in traditional learning settings. Our results indicate that dialog-based learning applications combined with NLP text feedback have a beneficial use to foster better writing skills of students.
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