Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner

Recently, predictive analytics has found a place in many research areas. From business to healthcare, the revolutions of predictive analytics studies are constantly evolving to help decision makers identify the problem and make a wise decision. While a bigger impact has been reported on the developm...

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Published in:Journal of Advanced Research in Applied Sciences and Engineering Technology
Main Author: Razi N.F.M.; Sarkam N.A.; Mohammad N.H.; Azmi A.Z.; Wahab J.A.; Baharun N.H.
Format: Article
Language:English
Published: Semarak Ilmu Publishing 2025
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85201050892&doi=10.37934%2fARASET.47.2.1527&partnerID=40&md5=b434177d51efdad12a698361c63f4b56
id 2-s2.0-85201050892
spelling 2-s2.0-85201050892
Razi N.F.M.; Sarkam N.A.; Mohammad N.H.; Azmi A.Z.; Wahab J.A.; Baharun N.H.
Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
2025
Journal of Advanced Research in Applied Sciences and Engineering Technology
47
2
10.37934/ARASET.47.2.1527
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85201050892&doi=10.37934%2fARASET.47.2.1527&partnerID=40&md5=b434177d51efdad12a698361c63f4b56
Recently, predictive analytics has found a place in many research areas. From business to healthcare, the revolutions of predictive analytics studies are constantly evolving to help decision makers identify the problem and make a wise decision. While a bigger impact has been reported on the development of predictive models in business studies, there has been very little effort that investigates the deployment of predictive models by using machine learning approaches specifically involving SMEs. Small business entrepreneurs (SMEs) are among the entities most affected because of the COVID-19 pandemic. Hence, this study aims to develop a model that could predict the motivation score of GKP recipients based on three factors: satisfaction, perceived value, and perceived expectation. Four different regression models, namely Linear, Ridge, Lasso, and SVR, were developed and evaluated as the best model by using Rapid Miner machine learning software tools. The GKIPP grant dataset has been used as a case study for estimating the motive of the GKP grant to evaluate the outcomes of various regression models. The findings indicate that linear and SVR models have produced highly accurate predictions about the motivation of GKP recipients. They have also produced a high proportion of R-square scores across all regression models, which is highly encouraging. © 2025, Semarak Ilmu Publishing. All rights reserved.
Semarak Ilmu Publishing
24621943
English
Article

author Razi N.F.M.; Sarkam N.A.; Mohammad N.H.; Azmi A.Z.; Wahab J.A.; Baharun N.H.
spellingShingle Razi N.F.M.; Sarkam N.A.; Mohammad N.H.; Azmi A.Z.; Wahab J.A.; Baharun N.H.
Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
author_facet Razi N.F.M.; Sarkam N.A.; Mohammad N.H.; Azmi A.Z.; Wahab J.A.; Baharun N.H.
author_sort Razi N.F.M.; Sarkam N.A.; Mohammad N.H.; Azmi A.Z.; Wahab J.A.; Baharun N.H.
title Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
title_short Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
title_full Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
title_fullStr Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
title_full_unstemmed Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
title_sort Predicting Motivation among GKP Recipients using Regression Techniques in Machine Learning: An Implementation of Rapid Miner
publishDate 2025
container_title Journal of Advanced Research in Applied Sciences and Engineering Technology
container_volume 47
container_issue 2
doi_str_mv 10.37934/ARASET.47.2.1527
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85201050892&doi=10.37934%2fARASET.47.2.1527&partnerID=40&md5=b434177d51efdad12a698361c63f4b56
description Recently, predictive analytics has found a place in many research areas. From business to healthcare, the revolutions of predictive analytics studies are constantly evolving to help decision makers identify the problem and make a wise decision. While a bigger impact has been reported on the development of predictive models in business studies, there has been very little effort that investigates the deployment of predictive models by using machine learning approaches specifically involving SMEs. Small business entrepreneurs (SMEs) are among the entities most affected because of the COVID-19 pandemic. Hence, this study aims to develop a model that could predict the motivation score of GKP recipients based on three factors: satisfaction, perceived value, and perceived expectation. Four different regression models, namely Linear, Ridge, Lasso, and SVR, were developed and evaluated as the best model by using Rapid Miner machine learning software tools. The GKIPP grant dataset has been used as a case study for estimating the motive of the GKP grant to evaluate the outcomes of various regression models. The findings indicate that linear and SVR models have produced highly accurate predictions about the motivation of GKP recipients. They have also produced a high proportion of R-square scores across all regression models, which is highly encouraging. © 2025, Semarak Ilmu Publishing. All rights reserved.
publisher Semarak Ilmu Publishing
issn 24621943
language English
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