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A learning analytics-based collaborative conversational agentto foster productive dialogue in inquiry learning

dc.contributor.authorAdelson de Araujo et al
dc.date.accessioned2026-02-20T12:40:57Z
dc.date.issued2024
dc.descriptionDepartment of Learning, Data Analytics and Technology, Faculty of Behavioural, Management and Social Sciences, University of Twente, Enschede, The Netherlands
dc.description.abstractBackground: Sustaining productive student–student dialogue in online collaborative inquiry learning is challenging, and teacher support is limited when needed in multiple groups simultaneously. Collaborative conversational agents (CCAs) have been used in the past to support student dialogue. Yet, research is needed to reveal the characteristics and effectiveness of such agents. Objectives: To investigate the extent to which our analytics-based Collaborative Learning Agent for Interactive Reasoning (Clair) can improve the productivity of student dialogue, we assessed both the levels at which students shared thoughts, listened to each other, deepened reasoning, and engaged with peer's reasoning, as well as their perceived productivity in terms of their learning community, accurate knowledge, and rigorous thinking. Method: In two separate studies, 19 and 27 dyads of secondary school students from Brazil and the Netherlands, respectively, participated in digital inquiry-based science lessons. The dyads were assigned to two conditions: with Clair present (treatment) or absent (control) in the chat. Sequential pattern mining of chat logs and the student's responses to a questionnaire were used to evaluate Clair's impact. Results: Analysis revealed that in both studies, Clair's presence resulted in dyads sharing their thoughts at a higher frequency compared to dyads that did not have Clair. Additionally, in the Netherlands' study, Clair's presence led to a higher frequency of students engaging with each other's reasoning. No differences were observed in students' perceived productivity. Conclusion: This work deepens our understanding of how CCAs impact student dialogue and illustrates the importance of a multidimensional perspective in analysing the role of CCAs in guiding student dialogue.
dc.identifier.citationde Araujo, A., Papadopoulos, P.M., McKenney, S. and de Jong, T., 2024. A learning analytics‐based collaborative conversational agent to foster productive dialogue in inquiry learning. Journal of computer assisted learning, 40(6), pp.2700-2714.
dc.identifier.urihttp://hdl.handle.net/10394/46066
dc.language.isoen
dc.publisherUnit for Distance Education, Faculty of Education, University of Pretoria
dc.subjectcollaborative learning
dc.subjectconversational agents
dc.subjectinquiry learning
dc.subjectlearning analytics
dc.subjectproductive dialogue
dc.titleA learning analytics-based collaborative conversational agentto foster productive dialogue in inquiry learning
dc.typeArticle

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