Automated Data-Driven Generation of Personalized Pedagogical Interventions in Intelligent Tutoring Systems

Intelligent tutoring systems (ITS) have been shown to be highly effective at promoting learning as compared to other computer-based instructional approaches. However, many ITS rely heavily on expert design and hand-crafted rules. This makes them difficult to build and transfer across domains and lim...

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Veröffentlicht in:International journal of artificial intelligence in education 2022-06, Vol.32 (2), p.323-349
Hauptverfasser: Kochmar, Ekaterina, Vu, Dung Do, Belfer, Robert, Gupta, Varun, Serban, Iulian Vlad, Pineau, Joelle
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container_title International journal of artificial intelligence in education
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creator Kochmar, Ekaterina
Vu, Dung Do
Belfer, Robert
Gupta, Varun
Serban, Iulian Vlad
Pineau, Joelle
description Intelligent tutoring systems (ITS) have been shown to be highly effective at promoting learning as compared to other computer-based instructional approaches. However, many ITS rely heavily on expert design and hand-crafted rules. This makes them difficult to build and transfer across domains and limits their potential efficacy. In this paper, we investigate how feedback in a large-scale ITS can be automatically generated in a data-driven way, and more specifically how personalization of feedback can lead to improvements in student performance outcomes. First, in this paper we propose a machine learning approach to generate personalized feedback in an automated way, which takes individual needs of students into account, while alleviating the need of expert intervention and design of hand-crafted rules. We leverage state-of-the-art machine learning and natural language processing techniques to provide students with personalized feedback using hints and Wikipedia-based explanations . Second, we demonstrate that personalized feedback leads to improved success rates at solving exercises in practice: our personalized feedback model is used in Korbit, a large-scale dialogue-based ITS with around 20,000 students launched in 2019. We present the results of experiments with students and show that the automated, data-driven, personalized feedback leads to a significant overall improvement of 22.95 % in student performance outcomes and substantial improvements in the subjective evaluation of the feedback.
doi_str_mv 10.1007/s40593-021-00267-x
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subjects Academic Achievement
Artificial Intelligence
Automation
CAI
Cognition & reasoning
Computer assisted instruction
Computer Science
Computers and Education
Curricula
Customization
Data
Dialogs (Language)
Educational Environment
Educational Technology
Feedback
Feedback (Response)
Individualized Instruction
Intelligent Tutoring Systems
Intervention
Machine learning
Natural language
Natural Language Processing
Pedagogy
Problem Solving
Student Needs
Students
System effectiveness
Teaching
Teaching Methods
Tutoring
User Interfaces and Human Computer Interaction
title Automated Data-Driven Generation of Personalized Pedagogical Interventions in Intelligent Tutoring Systems
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