Access to online learning: Machine learning analysis from a social justice perspective
Access to online learning: Machine learning analysis from a social justice perspective
Access to education is the first step to benefiting from it. Although cumulative online learning experience is linked academic learning gains, between-country inequalities mean that large populations are prevented from accumulating such experience. Low-and-middle-income countries are affected by disadvantages in infrastructure such as internet access and uncontextualised learning content, and parents who are less available and less well-resourced than in high-income countries. COVID-19 has exacerbated the global inequalities, with girls affected more than boys in these regions. Therefore, the present research mined online learning data to identify features that are important for access to online learning. Data mining of 54,842,787 initial (random subsample n = 5000) data points from one online learning platform was conducted by partnering theory with data in model development. Following examination of a theory-led machine learning model, a data-led approach was taken to reach a final model. The final model was used to derive Shapley values for feature importance. As expected, country differences, gender, and COVID-19 were important features in access to online learning. The data-led model development resulted in additional insights not examined in the initial, theory-led model: namely, the importance of Math ability, year of birth, session difficulty level, month of birth, and time taken to complete a session.
COVID-19, Country inequalities, Educational access, Machine learning, Online learning
McIntyre, Nora
c9a9ecfb-10a7-4f59-b1f5-652f9db2f28f
4 October 2022
McIntyre, Nora
c9a9ecfb-10a7-4f59-b1f5-652f9db2f28f
McIntyre, Nora
(2022)
Access to online learning: Machine learning analysis from a social justice perspective.
Education and Information Technologies.
(doi:10.1007/s10639-022-11280-5).
Abstract
Access to education is the first step to benefiting from it. Although cumulative online learning experience is linked academic learning gains, between-country inequalities mean that large populations are prevented from accumulating such experience. Low-and-middle-income countries are affected by disadvantages in infrastructure such as internet access and uncontextualised learning content, and parents who are less available and less well-resourced than in high-income countries. COVID-19 has exacerbated the global inequalities, with girls affected more than boys in these regions. Therefore, the present research mined online learning data to identify features that are important for access to online learning. Data mining of 54,842,787 initial (random subsample n = 5000) data points from one online learning platform was conducted by partnering theory with data in model development. Following examination of a theory-led machine learning model, a data-led approach was taken to reach a final model. The final model was used to derive Shapley values for feature importance. As expected, country differences, gender, and COVID-19 were important features in access to online learning. The data-led model development resulted in additional insights not examined in the initial, theory-led model: namely, the importance of Math ability, year of birth, session difficulty level, month of birth, and time taken to complete a session.
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More information
Accepted/In Press date: 4 August 2022
e-pub ahead of print date: 4 October 2022
Published date: 4 October 2022
Additional Information:
© The Author(s) 2022.
Keywords:
COVID-19, Country inequalities, Educational access, Machine learning, Online learning
Identifiers
Local EPrints ID: 471087
URI: http://eprints.soton.ac.uk/id/eprint/471087
ISSN: 1360-2357
PURE UUID: e86fe79d-f747-4071-813b-29d2804650c2
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Date deposited: 25 Oct 2022 16:43
Last modified: 17 Mar 2024 04:07
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