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Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach

Millions of people have enrolled and enrol (especially in the Covid-19 pandemic world) in MOOCs. However, the retention rate of learners is notoriously low. The majority of the research work on this issue focuses on predicting the dropout rate, but very few use explainable learning patterns as part...

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Autores principales: Alamri, Ahmed, Sun, Zhongtian, Cristea, Alexandra I., Senthilnathan, Gautham, Shi, Lei, Stewart, Craig
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7266654/
http://dx.doi.org/10.1007/978-3-030-49663-0_42
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author Alamri, Ahmed
Sun, Zhongtian
Cristea, Alexandra I.
Senthilnathan, Gautham
Shi, Lei
Stewart, Craig
author_facet Alamri, Ahmed
Sun, Zhongtian
Cristea, Alexandra I.
Senthilnathan, Gautham
Shi, Lei
Stewart, Craig
author_sort Alamri, Ahmed
collection PubMed
description Millions of people have enrolled and enrol (especially in the Covid-19 pandemic world) in MOOCs. However, the retention rate of learners is notoriously low. The majority of the research work on this issue focuses on predicting the dropout rate, but very few use explainable learning patterns as part of this analysis. However, visual representation of learning patterns could provide deeper insights into learners’ behaviour across different courses, whilst numerical analyses can – and arguably, should – be used to confirm the latter. Thus, this paper proposes and compares different granularity visualisations for learning patterns (based on clickstream data) for both course completers and non-completers. In the large-scale MOOCs we analysed, across various domains, our fine-grained, fish-eye visualisation approach showed that non-completers are more likely to jump forward in their learning sessions, often on a ‘catch-up’ path, whilst completers exhibit linear behaviour. For coarser, bird-eye granularity visualisation, we observed learners’ transition between types of learning activity, obtaining typed transition graphs. The results, backed up by statistical significance analysis and machine learning, provide insights for course instructors to maintain engagement of learners by adapting the course design to not just ‘dry’ predicted values, but explainable, visually viable paths extracted.
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spelling pubmed-72666542020-06-03 Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach Alamri, Ahmed Sun, Zhongtian Cristea, Alexandra I. Senthilnathan, Gautham Shi, Lei Stewart, Craig Intelligent Tutoring Systems Article Millions of people have enrolled and enrol (especially in the Covid-19 pandemic world) in MOOCs. However, the retention rate of learners is notoriously low. The majority of the research work on this issue focuses on predicting the dropout rate, but very few use explainable learning patterns as part of this analysis. However, visual representation of learning patterns could provide deeper insights into learners’ behaviour across different courses, whilst numerical analyses can – and arguably, should – be used to confirm the latter. Thus, this paper proposes and compares different granularity visualisations for learning patterns (based on clickstream data) for both course completers and non-completers. In the large-scale MOOCs we analysed, across various domains, our fine-grained, fish-eye visualisation approach showed that non-completers are more likely to jump forward in their learning sessions, often on a ‘catch-up’ path, whilst completers exhibit linear behaviour. For coarser, bird-eye granularity visualisation, we observed learners’ transition between types of learning activity, obtaining typed transition graphs. The results, backed up by statistical significance analysis and machine learning, provide insights for course instructors to maintain engagement of learners by adapting the course design to not just ‘dry’ predicted values, but explainable, visually viable paths extracted. 2020-06-03 /pmc/articles/PMC7266654/ http://dx.doi.org/10.1007/978-3-030-49663-0_42 Text en © Springer Nature Switzerland AG 2020 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
Alamri, Ahmed
Sun, Zhongtian
Cristea, Alexandra I.
Senthilnathan, Gautham
Shi, Lei
Stewart, Craig
Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach
title Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach
title_full Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach
title_fullStr Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach
title_full_unstemmed Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach
title_short Is MOOC Learning Different for Dropouts? A Visually-Driven, Multi-granularity Explanatory ML Approach
title_sort is mooc learning different for dropouts? a visually-driven, multi-granularity explanatory ml approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7266654/
http://dx.doi.org/10.1007/978-3-030-49663-0_42
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