Reinforcement learning tutor better supported lower performers in a math task
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Published:2024-02-09
Issue:5
Volume:113
Page:3023-3048
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ISSN:0885-6125
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Container-title:Machine Learning
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language:en
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Short-container-title:Mach Learn
Author:
Ruan Sherry, Nie Allen, Steenbergen William, He Jiayu, Zhang J. Q., Guo Meng, Liu Yao, Dang Nguyen Kyle, Wang Catherine Y., Ying Rui, Landay James A., Brunskill EmmaORCID
Abstract
AbstractResource limitations make it challenging to provide all students with one of the most effective educational interventions: personalized instruction. Reinforcement learning could be a pivotal tool to decrease the development costs and enhance the effectiveness of intelligent tutoring software, that aims to provide the right support, at the right time, to a student. Here we illustrate that deep reinforcement learning can be used to provide adaptive pedagogical support to students learning about the concept of volume in a narrative storyline software. Using explainable artificial intelligence tools, we extracted interpretable insights about the pedagogical policy learned and demonstrated that the resulting policy had similar performance in a different student population. Most importantly, in both studies, the reinforcement-learning narrative system had the largest benefit for those students with the lowest initial pretest scores, suggesting the opportunity for AI to adapt and provide support for those most in need.
Funder
Tomorrow Advancing Life NSF CISE RI Stanford Institute for Human-Centered Artificial Intelligence, Stanford University
Publisher
Springer Science and Business Media LLC
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2 articles.
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