Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4)
Forecasting is a systematic attempt to predict future events usingpast data, based on scientific and qualitative methods. For the maternal health program, forecasting is important as its process consists of planning, targetting and achievement. Based on data from the Ministry of Health, the quality...
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Universitas Airlangga
2019-07-01
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doaj-1589bfd24a5146208224602d796666d92021-06-02T14:14:43ZengUniversitas AirlanggaJurnal Biometrika dan Kependudukan2302-707X2540-88282019-07-0181112010.20473/jbk.v8i1.2019.11-206955Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4)Ananda Riska Mita Izati0Hari Basuki Notobroto1UPTD Kesehatan Puskesmas PandaanDepartemen Biostatistika dan Kependudukan Fakultas Kesehatan Masyarakat Universitas AirlanggaForecasting is a systematic attempt to predict future events usingpast data, based on scientific and qualitative methods. For the maternal health program, forecasting is important as its process consists of planning, targetting and achievement. Based on data from the Ministry of Health, the quality of antenatal care in Indonesia was still low (87.48 percent) compared to that of the national target (95 percent). This study aims to apply the methods of artificial neural network in predicting the antenatalcare (K4). This applied research used a descriptive method with secondary data in the form of monthly antenatal care visits (K4) from the year of 2012 to2015 obtained from the Provincial Health Office of East Java, with a case study in Bondowoso. The forecasting result in 2016 based onthe 12-4-1 network architecture was 9533.5698, with the value of Mean Square Error (MSE) of 3091.84404. The average percentage of errord based on a comparison with the actual data is 0.1854 or reaching the accuracy of 99.81 percent. The conclusion of this study is that a neural network has a low error value and a high accuracy.Therefore, forecasting results can be used as an input in the planning program.https://e-journal.unair.ac.id/JBK/article/view/12289forecasting, artificial neural network, antenatal care |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ananda Riska Mita Izati Hari Basuki Notobroto |
spellingShingle |
Ananda Riska Mita Izati Hari Basuki Notobroto Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4) Jurnal Biometrika dan Kependudukan forecasting, artificial neural network, antenatal care |
author_facet |
Ananda Riska Mita Izati Hari Basuki Notobroto |
author_sort |
Ananda Riska Mita Izati |
title |
Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4) |
title_short |
Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4) |
title_full |
Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4) |
title_fullStr |
Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4) |
title_full_unstemmed |
Penerapan Metode Artificial Neural Network dalam Peramalan Jumlah Kunjungan Ibu Hamil (K4) |
title_sort |
penerapan metode artificial neural network dalam peramalan jumlah kunjungan ibu hamil (k4) |
publisher |
Universitas Airlangga |
series |
Jurnal Biometrika dan Kependudukan |
issn |
2302-707X 2540-8828 |
publishDate |
2019-07-01 |
description |
Forecasting is a systematic attempt to predict future events usingpast data, based on scientific and qualitative methods. For the maternal health program, forecasting is important as its process consists of planning, targetting and achievement. Based on data from the Ministry of Health, the quality of antenatal care in Indonesia was still low (87.48 percent) compared to that of the national target (95 percent). This study aims to apply the methods of artificial neural network in predicting the antenatalcare (K4). This applied research used a descriptive method with secondary data in the form of monthly antenatal care visits (K4) from the year of 2012 to2015 obtained from the Provincial Health Office of East Java, with a case study in Bondowoso. The forecasting result in 2016 based onthe 12-4-1 network architecture was 9533.5698, with the value of Mean Square Error (MSE) of 3091.84404. The average percentage of errord based on a comparison with the actual data is 0.1854 or reaching the accuracy of 99.81 percent. The conclusion of this study is that a neural network has a low error value and a high accuracy.Therefore, forecasting results can be used as an input in the planning program. |
topic |
forecasting, artificial neural network, antenatal care |
url |
https://e-journal.unair.ac.id/JBK/article/view/12289 |
work_keys_str_mv |
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