Improving student success using predictive models and data visualisations
The need to educate a competitive workforce is a global problem. In the US, for example, despite billions of dollars spent to improve the educational system, approximately 35% of students never finish high school. The drop rate among some demographic groups is as high as 50–60%. At the co...
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doaj-2220ed50ab3e411d842934dd7d1811242020-11-25T00:21:53ZengAssociation for Learning Technology Research in Learning Technology2156-70692156-70772012-08-0120011310.3402/rlt.v20i0.19191Improving student success using predictive models and data visualisationsHanan AyadAlfred EssaThe need to educate a competitive workforce is a global problem. In the US, for example, despite billions of dollars spent to improve the educational system, approximately 35% of students never finish high school. The drop rate among some demographic groups is as high as 50–60%. At the college level in the US only 30% of students graduate from 2-year colleges in 3 years or less and approximately 50% graduate from 4-year colleges in 5 years or less. A basic challenge in delivering global education, therefore, is improving student success. By student success we mean improving retention, completion and graduation rates. In this paper we describe a Student Success System (S3) that provides a holistic, analytical view of student academic progress.1 The core of S3 is a flexible predictive modelling engine that uses machine intelligence and statistical techniques to identify at-risk students pre-emptively. S3 also provides a set of advanced data visualisations for reaching diagnostic insights and a case management tool for managing interventions. S3's open modular architecture will also allow integration and plug-ins with both open and proprietary software. Powered by learning analytics, S3 is intended as an end-to-end solution for identifying at-risk students, understanding why they are at risk, designing interventions to mitigate that risk and finally closing the feedback look by tracking the efficacy of the applied intervention.http://www.researchinlearningtechnology.net/index.php/rlt/article/view/19191/pdf_1predictive modelsdata visualisationstudent performancerisk analytics |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hanan Ayad Alfred Essa |
spellingShingle |
Hanan Ayad Alfred Essa Improving student success using predictive models and data visualisations Research in Learning Technology predictive models data visualisation student performance risk analytics |
author_facet |
Hanan Ayad Alfred Essa |
author_sort |
Hanan Ayad |
title |
Improving student success using predictive models and data visualisations |
title_short |
Improving student success using predictive models and data visualisations |
title_full |
Improving student success using predictive models and data visualisations |
title_fullStr |
Improving student success using predictive models and data visualisations |
title_full_unstemmed |
Improving student success using predictive models and data visualisations |
title_sort |
improving student success using predictive models and data visualisations |
publisher |
Association for Learning Technology |
series |
Research in Learning Technology |
issn |
2156-7069 2156-7077 |
publishDate |
2012-08-01 |
description |
The need to educate a competitive workforce is a global problem. In the US, for example, despite billions of dollars spent to improve the educational system, approximately 35% of students never finish high school. The drop rate among some demographic groups is as high as 50–60%. At the college level in the US only 30% of students graduate from 2-year colleges in 3 years or less and approximately 50% graduate from 4-year colleges in 5 years or less. A basic challenge in delivering global education, therefore, is improving student success. By student success we mean improving retention, completion and graduation rates. In this paper we describe a Student Success System (S3) that provides a holistic, analytical view of student academic progress.1 The core of S3 is a flexible predictive modelling engine that uses machine intelligence and statistical techniques to identify at-risk students pre-emptively. S3 also provides a set of advanced data visualisations for reaching diagnostic insights and a case management tool for managing interventions. S3's open modular architecture will also allow integration and plug-ins with both open and proprietary software. Powered by learning analytics, S3 is intended as an end-to-end solution for identifying at-risk students, understanding why they are at risk, designing interventions to mitigate that risk and finally closing the feedback look by tracking the efficacy of the applied intervention. |
topic |
predictive models data visualisation student performance risk analytics |
url |
http://www.researchinlearningtechnology.net/index.php/rlt/article/view/19191/pdf_1 |
work_keys_str_mv |
AT hananayad improvingstudentsuccessusingpredictivemodelsanddatavisualisations AT alfredessa improvingstudentsuccessusingpredictivemodelsanddatavisualisations |
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