Improving student success using predictive models and data visualisations

被引:28
|
作者
Essa, Alfred [1 ]
Ayad, Hanan [1 ]
机构
[1] Desire2Learn Inc, Kitchener, ON, Canada
关键词
predictive models; data visualisation; student performance; risk analytics;
D O I
10.3402/rlt.v20i0.19191
中图分类号
G40 [教育学];
学科分类号
040101 ; 120403 ;
摘要
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.
引用
收藏
页码:58 / 70
页数:13
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