Dataset of GenAI-Assisted Information Problem Solving in Education
Xinyu Li, Kaixun Yang, Jiameng Wei, Yixin Cheng, Dragan Ga\v{s}evi\'c, Guanliang Chen

TL;DR
This paper introduces a comprehensive dataset capturing how students interact with GenAI tools during information problem solving in education, aiming to enhance understanding and development of effective, equitable AI-supported learning strategies.
Contribution
It provides the first detailed, multi-modal dataset of student-GenAI interactions in educational IPS, including dialogue, process logs, and survey data, to facilitate research on AI-assisted learning.
Findings
Dataset includes 279 students' interaction data
Captures dialogue, process logs, and survey responses
Supports research on equitable AI in education
Abstract
Information Problem Solving (IPS) is a critical competency for academic and professional success in education, work, and life. The advent of Generative Artificial Intelligence (GenAI), particularly tools like ChatGPT, has introduced new possibilities for supporting students in complex IPS tasks. However, empirical insights into how students engage with GenAI during IPS and how these tools can be effectively leveraged for learning remain limited. Moreover, differences in background--shaped by cultural and socioeconomic factors--pose additional challenges to the equitable integration of GenAI in educational contexts. To address this gap, we present an open-source dataset collected from 279 students at a public Australian university. The dataset was generated through students' use of FLoRA, a GenAI-powered educational platform that is widely adopted in the field of learning analytics.…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Artificial Intelligence in Healthcare and Education · Online Learning and Analytics
