Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders

Personal disorder is a type of mental illness. People with personal disorder can not respond changes and demands of life in normal ways. Women with type B personal disorder tend to have high risk of violence. It is important to make early detetction of this personal disorder, so that it can be antic...

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Main Authors: Hayat, Cynthia, Limong, Samuel, Sagala, Noviyanti
Format: UMS Journal (OJS)
Language:eng
Published: Department of Informatics, Universitas Muhammadiyah Surakarta, Indonesia 2019
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Online Access:https://journals.ums.ac.id/index.php/khif/article/view/7923
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author Hayat, Cynthia
Limong, Samuel
Sagala, Noviyanti
author_facet Hayat, Cynthia
Limong, Samuel
Sagala, Noviyanti
author_sort Hayat, Cynthia
collection OJS
description Personal disorder is a type of mental illness. People with personal disorder can not respond changes and demands of life in normal ways. Women with type B personal disorder tend to have high risk of violence. It is important to make early detetction of this personal disorder, so that it can be anticipated properly. This paper reports an architecture model of back propagation neural network (BPPN) for early detection of type B personal disorder. The back propagation process divided into two phases, i.e training and testing. The training process used 43 data and the testing process used 34 data. The output classified into 4 diagnosis category of type B personal disorder, I.e. anti social, borderline, histrionic, and narcissistics. The optimal parameters of BPPN model consist of maximum epoch of 1000, maximum mu of 10000000000, increase mu of 25, decrease mu of 0.1, and neuron hidden layer of 25. The MSE of training is 3.07E-14 and MSE of testing is 1.00E-03. The accuracy of training is 90.7%, while the accuracy of testing is 97.2%.
format UMS Journal (OJS)
id oai:ojs2.journals.ums.ac.id:article-7923
institution Universitas Muhammadiyah Surakarta
language eng
publishDate 2019
publisher Department of Informatics, Universitas Muhammadiyah Surakarta, Indonesia
record_format ojs
spelling oai:ojs2.journals.ums.ac.id:article-7923 Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders Hayat, Cynthia Limong, Samuel Sagala, Noviyanti backpropagation; early detection; neural network; personality disorders Personal disorder is a type of mental illness. People with personal disorder can not respond changes and demands of life in normal ways. Women with type B personal disorder tend to have high risk of violence. It is important to make early detetction of this personal disorder, so that it can be anticipated properly. This paper reports an architecture model of back propagation neural network (BPPN) for early detection of type B personal disorder. The back propagation process divided into two phases, i.e training and testing. The training process used 43 data and the testing process used 34 data. The output classified into 4 diagnosis category of type B personal disorder, I.e. anti social, borderline, histrionic, and narcissistics. The optimal parameters of BPPN model consist of maximum epoch of 1000, maximum mu of 10000000000, increase mu of 25, decrease mu of 0.1, and neuron hidden layer of 25. The MSE of training is 3.07E-14 and MSE of testing is 1.00E-03. The accuracy of training is 90.7%, while the accuracy of testing is 97.2%. Department of Informatics, Universitas Muhammadiyah Surakarta, Indonesia 2019-12-29 info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion application/pdf https://journals.ums.ac.id/index.php/khif/article/view/7923 10.23917/khif.v5i2.7923 Khazanah Informatika : Jurnal Ilmu Komputer dan Informatika; Vol. 5 No. 2 December 2019; 115-123 Khazanah Informatika; Vol. 5 No. 2 December 2019; 115-123 2477-698X 2621-038X eng https://journals.ums.ac.id/index.php/khif/article/view/7923/5216 https://journals.ums.ac.id/index.php/khif/article/downloadSuppFile/7923/937 Copyright (c) 2019 Khazanah Informatika: Jurnal Ilmu Komputer dan Informatika http://creativecommons.org/licenses/by/4.0
spellingShingle backpropagation; early detection; neural network; personality disorders
Hayat, Cynthia
Limong, Samuel
Sagala, Noviyanti
Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders
title Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders
title_full Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders
title_fullStr Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders
title_full_unstemmed Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders
title_short Architecture of Back Propagation Neural Network Model for Early Detection of Tendency to Type B Personality Disorders
title_sort architecture of back propagation neural network model for early detection of tendency to type b personality disorders
topic backpropagation; early detection; neural network; personality disorders
topic_facet backpropagation; early detection; neural network; personality disorders
url https://journals.ums.ac.id/index.php/khif/article/view/7923
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AT limongsamuel architectureofbackpropagationneuralnetworkmodelforearlydetectionoftendencytotypebpersonalitydisorders
AT sagalanoviyanti architectureofbackpropagationneuralnetworkmodelforearlydetectionoftendencytotypebpersonalitydisorders