This research paper focuses on using a convolutional neural network to assess student performance and addresses the impact of the COVID-19 pandemic on education. It introduces a two-step system that combines robust Bayesian model averaging with a frequentist approach for estimating parameters in a multinomial logistic regression model. The authors provide an empirical example illustrating the application of this system in analysing student performance. They also explore strategies to improve e-learning tools by addressing technological factors. The paper contributes to educational evaluation and policy analysis by incorporating deep learning systems and addressing the challenges posed by the pandemic.

Digital Future in Education: Paradoxes, Hopes and Realities

Luca GIRALDI;
2023-01-01

Abstract

This research paper focuses on using a convolutional neural network to assess student performance and addresses the impact of the COVID-19 pandemic on education. It introduces a two-step system that combines robust Bayesian model averaging with a frequentist approach for estimating parameters in a multinomial logistic regression model. The authors provide an empirical example illustrating the application of this system in analysing student performance. They also explore strategies to improve e-learning tools by addressing technological factors. The paper contributes to educational evaluation and policy analysis by incorporating deep learning systems and addressing the challenges posed by the pandemic.
2023
Digital Future in Education.Paradoxes, Hopes and Realities
RITHA PUBLISHING
164
189
9786069551615
Machine learning, student performance, Bayesian inference, e-learning platforms, logistic regression, variable selection procedure.
Antonio PACIFICO,Luca GIRALDI, Elena CEDROLA
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2069402
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