2015 |
Isa, N R M; Yusoff, M; Khalid, N E; Tahir, N; Nikmat, Binti A W Autism severity level detection using fuzzy expert system Conference Institute of Electrical and Electronics Engineers Inc., 2015, ISBN: 9781479957651, (cited By 2). Abstract | Links | BibTeX | Tags: Autism, Autism Severity Level, Autistic Children, Children with Autism, Data Acquisition, Developmental Disorders, Diseases, Education, Expert Systems, Fuzzy Expert Systems, Level Detections, Manufacture, Robotics, Social Communications, Surveys, System Architectures, Teaching @conference{Isa2015218, title = {Autism severity level detection using fuzzy expert system}, author = {N R M Isa and M Yusoff and N E Khalid and N Tahir and A W Binti Nikmat}, url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84959503922&doi=10.1109%2fROMA.2014.7295891&partnerID=40&md5=63e742d59b785d14f87d98dac7dd71ee}, doi = {10.1109/ROMA.2014.7295891}, isbn = {9781479957651}, year = {2015}, date = {2015-01-01}, journal = {2014 IEEE International Symposium on Robotics and Manufacturing Automation, IEEE-ROMA2014}, pages = {218-223}, publisher = {Institute of Electrical and Electronics Engineers Inc.}, abstract = {Autism is a neuro developmental disorder that is recently well known among Malaysian. Many researches on autism detection have been conducted worldwide. However, there is lack of research conducted in detecting autism severity level. Therefore, this paper focuses on autism severity level detection using fuzzy expert system. Two main autistic behavioral criteria are selected which are social communication impairment and restricted repetitive behavior. Data acquisition was based on interview sessions with clinical psychologist and distribution of 36 questionnaires to teachers and parents that have autistic children. It was then analyzed and the cut off points for each severity level; level 1 (mild), level 2 (moderate), and level 3 (severe) is determined. The fuzzy expert system processes are employed to detect the severity levels. The processes involve Fuzzy system architecture, fuzzification, rules evaluation, rules evaluation and defuzzification. The finding demonstrates that the system is able to detect autism severity level with a good accuracy. This system also accommodates with suitable recommendation based on the generated result whether the suggestion is to go for speech therapy or behavior therapy. © 2014 IEEE.}, note = {cited By 2}, keywords = {Autism, Autism Severity Level, Autistic Children, Children with Autism, Data Acquisition, Developmental Disorders, Diseases, Education, Expert Systems, Fuzzy Expert Systems, Level Detections, Manufacture, Robotics, Social Communications, Surveys, System Architectures, Teaching}, pubstate = {published}, tppubtype = {conference} } Autism is a neuro developmental disorder that is recently well known among Malaysian. Many researches on autism detection have been conducted worldwide. However, there is lack of research conducted in detecting autism severity level. Therefore, this paper focuses on autism severity level detection using fuzzy expert system. Two main autistic behavioral criteria are selected which are social communication impairment and restricted repetitive behavior. Data acquisition was based on interview sessions with clinical psychologist and distribution of 36 questionnaires to teachers and parents that have autistic children. It was then analyzed and the cut off points for each severity level; level 1 (mild), level 2 (moderate), and level 3 (severe) is determined. The fuzzy expert system processes are employed to detect the severity levels. The processes involve Fuzzy system architecture, fuzzification, rules evaluation, rules evaluation and defuzzification. The finding demonstrates that the system is able to detect autism severity level with a good accuracy. This system also accommodates with suitable recommendation based on the generated result whether the suggestion is to go for speech therapy or behavior therapy. © 2014 IEEE. |
2011 |
Yusoff, N M; Rusli, N S; Ishak, R Le-ADS: Early learning disability detection system for autism and dyslexia Journal Article Communications in Computer and Information Science, 174 CCIS (PART 2), pp. 433-437, 2011, ISSN: 18650929, (cited By 1). Abstract | Links | BibTeX | Tags: Detection System, Development Process, Diseases, Dyslexia, Early Learning, Engineering Research, Handicapped Persons, Human Computer Interaction, Know-how, Knowledge Management, Learning Disorder, Mild Autism, Primary Schools, Screening System, Screening Tests, Standalone Software, System Architectures @article{Yusoff2011433, title = {Le-ADS: Early learning disability detection system for autism and dyslexia}, author = {N M Yusoff and N S Rusli and R Ishak}, url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-79960415721&doi=10.1007%2f978-3-642-22095-1_87&partnerID=40&md5=81c7ed311b28be5a6b9017df102e4d58}, doi = {10.1007/978-3-642-22095-1_87}, issn = {18650929}, year = {2011}, date = {2011-01-01}, journal = {Communications in Computer and Information Science}, volume = {174 CCIS}, number = {PART 2}, pages = {433-437}, abstract = {Screening test is one of common approaches to detect learning disabilities among children. The Early Learning Disability Detection System for Autism and Dyslexia (Le-AdS) is developed to help primary school teachers to recognize signs and students' behaviour. Studies and researches for the system have been done to understand these types of disorder. Research on the system architecture has also been carried out to know how the system should work based on the requirements and needs of the user. Interviews, reading and overview have been applied throughout the development process of this standalone software. This paper presents the work of Early Learning Disability Detection for Autism and Dyslexia (Le-ADS). © 2011 Springer-Verlag.}, note = {cited By 1}, keywords = {Detection System, Development Process, Diseases, Dyslexia, Early Learning, Engineering Research, Handicapped Persons, Human Computer Interaction, Know-how, Knowledge Management, Learning Disorder, Mild Autism, Primary Schools, Screening System, Screening Tests, Standalone Software, System Architectures}, pubstate = {published}, tppubtype = {article} } Screening test is one of common approaches to detect learning disabilities among children. The Early Learning Disability Detection System for Autism and Dyslexia (Le-AdS) is developed to help primary school teachers to recognize signs and students' behaviour. Studies and researches for the system have been done to understand these types of disorder. Research on the system architecture has also been carried out to know how the system should work based on the requirements and needs of the user. Interviews, reading and overview have been applied throughout the development process of this standalone software. This paper presents the work of Early Learning Disability Detection for Autism and Dyslexia (Le-ADS). © 2011 Springer-Verlag. |
Testingadminnaacuitm2020-05-28T06:49:14+00:00
2015 |
Autism severity level detection using fuzzy expert system Conference Institute of Electrical and Electronics Engineers Inc., 2015, ISBN: 9781479957651, (cited By 2). |
2011 |
Le-ADS: Early learning disability detection system for autism and dyslexia Journal Article Communications in Computer and Information Science, 174 CCIS (PART 2), pp. 433-437, 2011, ISSN: 18650929, (cited By 1). |