Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model
While only 4.2 million people out of a population of 7.9 million disabled people are working, a considerable contribution is still required from universities and industries to increase employability among the disabled, in particular, by providing adequate career guidance post higher education. This...
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doaj-cc14c03cd8ad47d48c4bab7fb507fbb22021-03-30T03:28:08ZengIEEEIEEE Access2169-35362020-01-01815953015954110.1109/ACCESS.2020.30186639173779Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment ModelDrishty Sobnath0Tobiasz Kaduk1Ikram Ur Rehman2https://orcid.org/0000-0003-0115-9024Olufemi Isiaq3Department of Research, Innovation, and Enterprise, Solent University, Southampton, U.K.School of Computing, Solent University, Southampton, U.K.School of Computing and Engineering, University of West London, London, U.K.School of Computing, Solent University, Southampton, U.K.While only 4.2 million people out of a population of 7.9 million disabled people are working, a considerable contribution is still required from universities and industries to increase employability among the disabled, in particular, by providing adequate career guidance post higher education. This study aims to identify the potential predictive features, which will improve the chances of engaging disabled school leavers in employment about 6 months after graduation. MALSEND is an analytical platform that consists of information about UK Destinations Leavers from Higher Education (DLHE) survey results from 2012 to 2017. The dataset of 270,934 student records with a known disability provides anonymised information about students' age range, year of study, disability type, results of the first degree, among others. Using both qualitative and quantitative approaches, characteristics of disabled candidates during and after school years were investigated to identify their engagement patterns. This article builds on constructing and selecting subsets of features useful to build a good predictor regarding the engagement of disabled students 6 months after graduation using the big data approach with machine learning principles. Features such as age, institution, disability type, among others were found to be essential predictors of the proposed employment model. A pilot was developed, which shows that the Decision Tree Classifier and Logistic Regression models provided the best results for predicting the Standard Occupation Classification (SOC) of a disabled school leaver in the UK with an accuracy of 96%.https://ieeexplore.ieee.org/document/9173779/Disabilityfeature selectionjob predictorsmachine learningMALSENDpredictive model |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Drishty Sobnath Tobiasz Kaduk Ikram Ur Rehman Olufemi Isiaq |
spellingShingle |
Drishty Sobnath Tobiasz Kaduk Ikram Ur Rehman Olufemi Isiaq Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model IEEE Access Disability feature selection job predictors machine learning MALSEND predictive model |
author_facet |
Drishty Sobnath Tobiasz Kaduk Ikram Ur Rehman Olufemi Isiaq |
author_sort |
Drishty Sobnath |
title |
Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model |
title_short |
Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model |
title_full |
Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model |
title_fullStr |
Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model |
title_full_unstemmed |
Feature Selection for UK Disabled Students’ Engagement Post Higher Education: A Machine Learning Approach for a Predictive Employment Model |
title_sort |
feature selection for uk disabled students’ engagement post higher education: a machine learning approach for a predictive employment model |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2020-01-01 |
description |
While only 4.2 million people out of a population of 7.9 million disabled people are working, a considerable contribution is still required from universities and industries to increase employability among the disabled, in particular, by providing adequate career guidance post higher education. This study aims to identify the potential predictive features, which will improve the chances of engaging disabled school leavers in employment about 6 months after graduation. MALSEND is an analytical platform that consists of information about UK Destinations Leavers from Higher Education (DLHE) survey results from 2012 to 2017. The dataset of 270,934 student records with a known disability provides anonymised information about students' age range, year of study, disability type, results of the first degree, among others. Using both qualitative and quantitative approaches, characteristics of disabled candidates during and after school years were investigated to identify their engagement patterns. This article builds on constructing and selecting subsets of features useful to build a good predictor regarding the engagement of disabled students 6 months after graduation using the big data approach with machine learning principles. Features such as age, institution, disability type, among others were found to be essential predictors of the proposed employment model. A pilot was developed, which shows that the Decision Tree Classifier and Logistic Regression models provided the best results for predicting the Standard Occupation Classification (SOC) of a disabled school leaver in the UK with an accuracy of 96%. |
topic |
Disability feature selection job predictors machine learning MALSEND predictive model |
url |
https://ieeexplore.ieee.org/document/9173779/ |
work_keys_str_mv |
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