Improving Student Learning with Hybrid Human-AI Tutoring: A Three-Study Quasi-Experimental Investigation (2312.11274v3)
Abstract: AI applications to support human tutoring have potential to significantly improve learning outcomes, but engagement issues persist, especially among students from low-income backgrounds. We introduce an AI-assisted tutoring model that combines human and AI tutoring and hypothesize that this synergy will have positive impacts on learning processes. To investigate this hypothesis, we conduct a three-study quasi-experiment across three urban and low-income middle schools: 1) 125 students in a Pennsylvania school; 2) 385 students (50% Latinx) in a California school; and 3) 75 students (100% Black) in a Pennsylvania charter school, all implementing analogous tutoring models. We compare learning analytics of students engaged in human-AI tutoring compared to students using math software only. We find human-AI tutoring has positive effects, particularly in student's proficiency and usage, with evidence suggesting lower achieving students may benefit more compared to higher achieving students. We illustrate the use of quasi-experimental methods adapted to the particulars of different schools and data-availability contexts so as to achieve the rapid data-driven iteration needed to guide an inspired creation into effective innovation. Future work focuses on improving the tutor dashboard and optimizing tutor-student ratios, while maintaining annual costs per students of approximately $700 annually.
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- Danielle R. Thomas (11 papers)
- Jionghao Lin (36 papers)
- Erin Gatz (6 papers)
- Ashish Gurung (7 papers)
- Shivang Gupta (9 papers)
- Kole Norberg (1 paper)
- Stephen E. Fancsali (1 paper)
- Vincent Aleven (12 papers)
- Lee Branstetter (1 paper)
- Emma Brunskill (86 papers)
- Kenneth R. Koedinger (21 papers)