Classification of Schizophrenia Data Using Support Vector Machine (SVM)

Publikation: Bidrag til tidsskriftKonferenceartikelForskningfagfællebedømt

Standard

Classification of Schizophrenia Data Using Support Vector Machine (SVM). / Rampisela, T. V.; Rustam, Z.

I: Journal of Physics: Conference Series, Bind 1108, Nr. 1, 012044, 04.12.2018.

Publikation: Bidrag til tidsskriftKonferenceartikelForskningfagfællebedømt

Harvard

Rampisela, TV & Rustam, Z 2018, 'Classification of Schizophrenia Data Using Support Vector Machine (SVM)', Journal of Physics: Conference Series, bind 1108, nr. 1, 012044. https://doi.org/10.1088/1742-6596/1108/1/012044

APA

Rampisela, T. V., & Rustam, Z. (2018). Classification of Schizophrenia Data Using Support Vector Machine (SVM). Journal of Physics: Conference Series, 1108(1), [012044]. https://doi.org/10.1088/1742-6596/1108/1/012044

Vancouver

Rampisela TV, Rustam Z. Classification of Schizophrenia Data Using Support Vector Machine (SVM). Journal of Physics: Conference Series. 2018 dec. 4;1108(1). 012044. https://doi.org/10.1088/1742-6596/1108/1/012044

Author

Rampisela, T. V. ; Rustam, Z. / Classification of Schizophrenia Data Using Support Vector Machine (SVM). I: Journal of Physics: Conference Series. 2018 ; Bind 1108, Nr. 1.

Bibtex

@inproceedings{04ce3ae659e7486f97e04c594dcbf70a,
title = "Classification of Schizophrenia Data Using Support Vector Machine (SVM)",
abstract = "Schizophrenia is a severe and chronic mental disorder. This disorder is marked with disturbances in thoughts, perceptions, and behaviours. Due to these disturbances that can trigger Schizophrenics to commit suicide or attempt to do so, Schizophrenics have a lower life expectancy than the general population. Schizophrenia is also difficult to diagnose as there is no physical test to diagnose it yet and its symptoms are very similar to several other mental disorders. Using Northwestern University Schizophrenia Data, this research aims to distinguish people who are Schizophrenics and people who are not. The data consists of 392 observations and 65 variables that are demographic data and clinician-filled Scale for the Assessment of Positive and Negative Symptoms questionnaires. Classification method used is machine learning with Support Vector Machines (SVM). Simulations are done with different data and percentage of training data. In each simulation, accuracy is measured. Model performance validation and evaluation are done by averaging ten times Hold-Out Validations that were done. In conclusion, SVM successfully classified Schizophrenia data with final accuracy of 90.1%. Furthermore, SVM with linear kernel and Gaussian kernel reached an accuracy of 95.0% in at least one simulation in classifying Schizophrenia data.",
author = "Rampisela, {T. V.} and Z. Rustam",
note = "Funding Information: The authors would like to express appreciation for the support of data collection and sharing for this project, which were funded by NIMH grant 1R01 MH084803. Publisher Copyright: {\textcopyright} Published under licence by IOP Publishing Ltd.; 2nd Mathematics, Informatics, Science and Education International Conference, MISEIC 2018 ; Conference date: 21-07-2018",
year = "2018",
month = dec,
day = "4",
doi = "10.1088/1742-6596/1108/1/012044",
language = "English",
volume = "1108",
journal = "Journal of Physics: Conference Series",
issn = "1742-6588",
publisher = "Institute of Physics Publishing Ltd",
number = "1",

}

RIS

TY - GEN

T1 - Classification of Schizophrenia Data Using Support Vector Machine (SVM)

AU - Rampisela, T. V.

AU - Rustam, Z.

N1 - Funding Information: The authors would like to express appreciation for the support of data collection and sharing for this project, which were funded by NIMH grant 1R01 MH084803. Publisher Copyright: © Published under licence by IOP Publishing Ltd.

PY - 2018/12/4

Y1 - 2018/12/4

N2 - Schizophrenia is a severe and chronic mental disorder. This disorder is marked with disturbances in thoughts, perceptions, and behaviours. Due to these disturbances that can trigger Schizophrenics to commit suicide or attempt to do so, Schizophrenics have a lower life expectancy than the general population. Schizophrenia is also difficult to diagnose as there is no physical test to diagnose it yet and its symptoms are very similar to several other mental disorders. Using Northwestern University Schizophrenia Data, this research aims to distinguish people who are Schizophrenics and people who are not. The data consists of 392 observations and 65 variables that are demographic data and clinician-filled Scale for the Assessment of Positive and Negative Symptoms questionnaires. Classification method used is machine learning with Support Vector Machines (SVM). Simulations are done with different data and percentage of training data. In each simulation, accuracy is measured. Model performance validation and evaluation are done by averaging ten times Hold-Out Validations that were done. In conclusion, SVM successfully classified Schizophrenia data with final accuracy of 90.1%. Furthermore, SVM with linear kernel and Gaussian kernel reached an accuracy of 95.0% in at least one simulation in classifying Schizophrenia data.

AB - Schizophrenia is a severe and chronic mental disorder. This disorder is marked with disturbances in thoughts, perceptions, and behaviours. Due to these disturbances that can trigger Schizophrenics to commit suicide or attempt to do so, Schizophrenics have a lower life expectancy than the general population. Schizophrenia is also difficult to diagnose as there is no physical test to diagnose it yet and its symptoms are very similar to several other mental disorders. Using Northwestern University Schizophrenia Data, this research aims to distinguish people who are Schizophrenics and people who are not. The data consists of 392 observations and 65 variables that are demographic data and clinician-filled Scale for the Assessment of Positive and Negative Symptoms questionnaires. Classification method used is machine learning with Support Vector Machines (SVM). Simulations are done with different data and percentage of training data. In each simulation, accuracy is measured. Model performance validation and evaluation are done by averaging ten times Hold-Out Validations that were done. In conclusion, SVM successfully classified Schizophrenia data with final accuracy of 90.1%. Furthermore, SVM with linear kernel and Gaussian kernel reached an accuracy of 95.0% in at least one simulation in classifying Schizophrenia data.

UR - http://www.scopus.com/inward/record.url?scp=85058307664&partnerID=8YFLogxK

U2 - 10.1088/1742-6596/1108/1/012044

DO - 10.1088/1742-6596/1108/1/012044

M3 - Conference article

AN - SCOPUS:85058307664

VL - 1108

JO - Journal of Physics: Conference Series

JF - Journal of Physics: Conference Series

SN - 1742-6588

IS - 1

M1 - 012044

T2 - 2nd Mathematics, Informatics, Science and Education International Conference, MISEIC 2018

Y2 - 21 July 2018

ER -

ID: 320796393