Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin

Autism Spectrum Disorder (ASD) is a complex neurobehavioral condition that disrupts the growth of one’s mentality by affecting their actions and communications. In dealing with ASD students in a classroom, there are several problems faced by educators such as catering the appropriate method for the...

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Main Author: Nordin, Daarin Nadia
Format: Thesis
Language:English
Published: 2020
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/35501/1/35501.pdf
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author Nordin, Daarin Nadia
author_facet Nordin, Daarin Nadia
author_sort Nordin, Daarin Nadia
collection UITM
description Autism Spectrum Disorder (ASD) is a complex neurobehavioral condition that disrupts the growth of one’s mentality by affecting their actions and communications. In dealing with ASD students in a classroom, there are several problems faced by educators such as catering the appropriate method for the student’s educational needs in a classroom setting. This is due to the student’s behaviour in the disorder that tends to mask their capabilities and intelligence. Previous studies also indicates that school administrations and educators find it a challenging task in class placements for autistic students due to the lack of information regarding the autistic student’s needs. Thus, this project proposes a solution to the problems by utilizing the machine learning approach which is the Agglomerative clustering algorithm. Previous studies shows that homogenous grouping of autistics students yields positive results, therefore, this project proposes to design and develop a clustering model system known as the CASDSS (Clustering Autism Spectrum Disorder Students System) where the main goal of this system is to create a homogenous grouping of the ASD students based on their behaviour, skills and intelligence. Another feature that the CASDSS offers is visualization where the system is able to visualize the clustering results as well as the strengths and weaknesses of the ASD students. 80 data regarding the autistic student’s behaviour, intelligence and skills are collected from special schools through distribution of questionnaires. The data that are collected comprises of 27 attributes where 13 of the attributes are regarding the student’s behaviour, 6 attributes regarding their skills and 6 regarding the student’s academics. Data cleaning and data transformation is first carried out, followed by normalization through the Z-score method before being processed in the clustering model. Several charts such as dendrograms and sunburst charts are used to visualize the clustering results. The CASDSS is then tested through functionality and usability testing to ensure that system runs without any error and to obtain the targeted user’s feedback in utilizing the system. To conclude, it is found that the Agglomerative Clustering approach in the model is able to solve the challenge in identifying the student’s educational need and the system is able to visualize the student’s strength and weaknesses in their academics, skills and behaviour. Hence, based on the model in the system developed, all objectives are achieved. As an extension in the study, future recommendations should include a classifying model that can classify ASD student’s method and approach in teaching them.
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spelling oai:ir.uitm.edu.my:355012020-11-25T04:15:51Z https://ir.uitm.edu.my/id/eprint/35501/ Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin Nordin, Daarin Nadia Instruments and machines Electronic Computers. Computer Science Algorithms Autism Spectrum Disorder (ASD) is a complex neurobehavioral condition that disrupts the growth of one’s mentality by affecting their actions and communications. In dealing with ASD students in a classroom, there are several problems faced by educators such as catering the appropriate method for the student’s educational needs in a classroom setting. This is due to the student’s behaviour in the disorder that tends to mask their capabilities and intelligence. Previous studies also indicates that school administrations and educators find it a challenging task in class placements for autistic students due to the lack of information regarding the autistic student’s needs. Thus, this project proposes a solution to the problems by utilizing the machine learning approach which is the Agglomerative clustering algorithm. Previous studies shows that homogenous grouping of autistics students yields positive results, therefore, this project proposes to design and develop a clustering model system known as the CASDSS (Clustering Autism Spectrum Disorder Students System) where the main goal of this system is to create a homogenous grouping of the ASD students based on their behaviour, skills and intelligence. Another feature that the CASDSS offers is visualization where the system is able to visualize the clustering results as well as the strengths and weaknesses of the ASD students. 80 data regarding the autistic student’s behaviour, intelligence and skills are collected from special schools through distribution of questionnaires. The data that are collected comprises of 27 attributes where 13 of the attributes are regarding the student’s behaviour, 6 attributes regarding their skills and 6 regarding the student’s academics. Data cleaning and data transformation is first carried out, followed by normalization through the Z-score method before being processed in the clustering model. Several charts such as dendrograms and sunburst charts are used to visualize the clustering results. The CASDSS is then tested through functionality and usability testing to ensure that system runs without any error and to obtain the targeted user’s feedback in utilizing the system. To conclude, it is found that the Agglomerative Clustering approach in the model is able to solve the challenge in identifying the student’s educational need and the system is able to visualize the student’s strength and weaknesses in their academics, skills and behaviour. Hence, based on the model in the system developed, all objectives are achieved. As an extension in the study, future recommendations should include a classifying model that can classify ASD student’s method and approach in teaching them. 2020 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/35501/1/35501.pdf Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin. (2020) Degree thesis, thesis, Universiti Teknologi MARA, Cawangan Melaka. <http://terminalib.uitm.edu.my/35501.pdf>
spellingShingle Instruments and machines
Electronic Computers. Computer Science
Algorithms
Nordin, Daarin Nadia
Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin
title Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin
title_full Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin
title_fullStr Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin
title_full_unstemmed Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin
title_short Clustering autism spectrum disorder student’s system based on intelligence, skills and behavior using agglomerative clustering algortihm / Daarin Nadia Nordin
title_sort clustering autism spectrum disorder student s system based on intelligence skills and behavior using agglomerative clustering algortihm daarin nadia nordin
topic Instruments and machines
Electronic Computers. Computer Science
Algorithms
url https://ir.uitm.edu.my/id/eprint/35501/1/35501.pdf
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