Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification

Educational Data Mining (EDM) have raised a lot of attention among researchers since the last few decades. EDM is used to gain more insight into the behavior of learners by building models based on data collected from learning tools which result in improving learning system to be more personalized...

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Main Author: Shamsudin, Haziqah
Format: Thesis
Language:English
Published: 2019
Subjects:
Online Access:http://eprints.usm.my/61185/1/Hybrid%20of%20optimized%20random%20forest%20cut.pdf
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spelling my-usm-ep.611852024-09-20T03:21:19Z Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification 2019-03 Shamsudin, Haziqah QA75-76.95 Calculating Machines Educational Data Mining (EDM) have raised a lot of attention among researchers since the last few decades. EDM is used to gain more insight into the behavior of learners by building models based on data collected from learning tools which result in improving learning system to be more personalized and adaptive. Learning style of specific users in the online learning system is determined based on their interaction and behaviour towards the system. Felder-Silverman’s learning style model is the most common online learning theory used in determining the learning style. Initially, in determining the users’ learning styles, users are asked to fill in the questionnaires which is designed to learn their learning style at the end of the learning sessions. However, this method is time consuming and the result are not reliable due to the human factors behavior. Thus, the researchers started to study the learning style by using an automated approach in which the activity log files are collected in order to understand the interactivity behaviour of the users with the system. 2019-03 Thesis http://eprints.usm.my/61185/ http://eprints.usm.my/61185/1/Hybrid%20of%20optimized%20random%20forest%20cut.pdf application/pdf en public masters Universiti Sains Malaysia Pusat Pengajian Sains Komputer
institution Universiti Sains Malaysia
collection USM Institutional Repository
language English
topic QA75-76.95 Calculating Machines
spellingShingle QA75-76.95 Calculating Machines
Shamsudin, Haziqah
Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification
description Educational Data Mining (EDM) have raised a lot of attention among researchers since the last few decades. EDM is used to gain more insight into the behavior of learners by building models based on data collected from learning tools which result in improving learning system to be more personalized and adaptive. Learning style of specific users in the online learning system is determined based on their interaction and behaviour towards the system. Felder-Silverman’s learning style model is the most common online learning theory used in determining the learning style. Initially, in determining the users’ learning styles, users are asked to fill in the questionnaires which is designed to learn their learning style at the end of the learning sessions. However, this method is time consuming and the result are not reliable due to the human factors behavior. Thus, the researchers started to study the learning style by using an automated approach in which the activity log files are collected in order to understand the interactivity behaviour of the users with the system.
format Thesis
qualification_level Master's degree
author Shamsudin, Haziqah
author_facet Shamsudin, Haziqah
author_sort Shamsudin, Haziqah
title Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification
title_short Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification
title_full Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification
title_fullStr Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification
title_full_unstemmed Hybrid Of Optimized Random Forest And Extreme Gradient Boosting For Online Learning Style Classification
title_sort hybrid of optimized random forest and extreme gradient boosting for online learning style classification
granting_institution Universiti Sains Malaysia
granting_department Pusat Pengajian Sains Komputer
publishDate 2019
url http://eprints.usm.my/61185/1/Hybrid%20of%20optimized%20random%20forest%20cut.pdf
_version_ 1811772890284032000