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A proposed methodology for investigating student-chatbot interaction patterns in giving peer feedback

Michael Pin-Chuan Lin, Daniel Chang, Philip H. Winne

2024Educational Technology Research and Development20 citationsDOIOpen Access PDF

Abstract

Abstract A chatbot is artificial intelligence software that converses with a user in natural language. It can be instrumental in mitigating teaching workloads by coaching or answering student inquiries. To understand student-chatbot interactions, this study is engineered to optimize student learning experience and instructional design. In this study, we developed a chatbot that supplemented disciplinary writing instructions to enhance peer reviewer’s feedback on draft essays. With 23 participants from a lower-division post-secondary education course, we delved into characteristics of student-chatbot interactions. Our analysis revealed students were often overconfident about their learning and comprehension. Drawing on these findings, we propose a new methodology to identify where improvements can be made in conversation patterns in educational chatbots. These guidelines include analyzing interaction pattern logs to progressively redesign chatbot scripts that improve discussions and optimize learning. We describe new methodology providing valuable insights for designing more effective instructional chatbots by enhancing and engaging student learning experiences through improved peer feedback.

Topics & Concepts

ChatbotComputer scienceConversationScripting languageInstructional designComprehensionWorld Wide WebMultimediaPsychologyProgramming languageOperating systemCommunicationAI in Service InteractionsTopic ModelingOnline Learning and Analytics