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At the intersection of human and algorithmic decision-making in distributed learning

Paul Prinsloo, Sharon Slade, Mohammad Khalil

2022Journal of Research on Technology in Education11 citationsDOI

Abstract

This article seeks to explore different combinations of human and Artificial Intelligence (AI) decision-making in the context of distributed learning. Distributed learning institutions face specific challenges such as high levels of student attrition and ensuring quality, cost-effective student support at scale using a range of technologies, such as AI. While there is an expanding body of research on AI in education (AIEd), this conceptual article proposes that combinations of human-algorithmic decision-making systems need careful and critical consideration, not only for their potential, but also for their appropriateness and ethical considerations. We operationalize a framework designed to consider robot autonomy at four key events in students’ learning journeys, namely (1) admission and registration; (2) student advising and support; (3) augmenting pedagogy; and (4) formative and summative assessment. We conclude the article by providing pointers for operationalizing options in human-algorithmic decision-making in distributed learning contexts.

Topics & Concepts

OperationalizationSummative assessmentComputer scienceFormative assessmentAutonomyKnowledge managementContext (archaeology)Educational technologyArtificial intelligenceMathematics educationPsychologyBiologyLawPhilosophyPolitical sciencePaleontologyEpistemologyOnline Learning and AnalyticsArtificial Intelligence in Healthcare and EducationEthics and Social Impacts of AI
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