Enhancing a Student Productivity Model for Adaptive Problem-Solving Assistance
Mehak Maniktala, Min Chi, and Tiffany Barnes

TL;DR
This paper introduces a data-driven method that uses students' hint usage to improve proactive adaptive assistance in intelligent tutoring systems, leading to time savings and better learning outcomes.
Contribution
It presents a novel approach that incorporates hint usage into HelpNeed predictions, enhancing proactive support effectiveness in open-ended domains.
Findings
Increased posttest scores with adaptive hint policy
Reduced training time for students
Improved prediction accuracy of HelpNeed
Abstract
Research on intelligent tutoring systems has been exploring data-driven methods to deliver effective adaptive assistance. While much work has been done to provide adaptive assistance when students seek help, they may not seek help optimally. This had led to the growing interest in proactive adaptive assistance, where the tutor provides unsolicited assistance upon predictions of struggle or unproductivity. Determining when and whether to provide personalized support is a well-known challenge called the assistance dilemma. Addressing this dilemma is particularly challenging in open-ended domains, where there can be several ways to solve problems. Researchers have explored methods to determine when to proactively help students, but few of these methods have taken prior hint usage into account. In this paper, we present a novel data-driven approach to incorporate students' hint usage in…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Online Learning and Analytics · Innovative Teaching and Learning Methods
