We propose a dynamic approach for curriculum management in university programs, i.e., for deciding which teaching and learning activities should be performed and in which order, as classes are being executed, to better aid the students reach the intended learning objectives. The approach ladders on a continuous-time dynamical model of the learning status of the individual students on the individual skills to be taught during the program. Such a model includes constructivist viewpoints on learning and zone of proximal development effects. Updating the program structure is then cast as an opportune model predictive control task, together with a moving horizon estimator that constantly infers the knowledge status of the class from the assessments performed in class. The proposed closed-loop approach is shown in simulation to significantly outperform the classical open-loop one, i.e., fixing the program structure in advance. Copyright (C) 2022 The Authors.

A receding horizon approach for curriculum management in higher education

Busetto R.;Formentin S.;
2022-01-01

Abstract

We propose a dynamic approach for curriculum management in university programs, i.e., for deciding which teaching and learning activities should be performed and in which order, as classes are being executed, to better aid the students reach the intended learning objectives. The approach ladders on a continuous-time dynamical model of the learning status of the individual students on the individual skills to be taught during the program. Such a model includes constructivist viewpoints on learning and zone of proximal development effects. Updating the program structure is then cast as an opportune model predictive control task, together with a moving horizon estimator that constantly infers the knowledge status of the class from the assessments performed in class. The proposed closed-loop approach is shown in simulation to significantly outperform the classical open-loop one, i.e., fixing the program structure in advance. Copyright (C) 2022 The Authors.
2022
IFAC-PapersOnLine
Learning analytics
curriculum design
personalized study planning
model predictive control
receding horizon estimation
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1234184
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