Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits

Hospitals are healthcare institutions that play an important role in providing health services to the community. To optimize the service, hospitals need to predict the number of outpatient visits. The objectives of this research are (1) determine the effect of window size on the accuracy of predicti...

Full description

Saved in:
Bibliographic Details
Main Authors: Fredianto Nurcakhyadi, Arief Hermawan
Format: Article
Language:English
Published: Fakultas Ilmu Komputer UMI 2024-08-01
Series:Ilkom Jurnal Ilmiah
Subjects:
Online Access:https://jurnal.fikom.umi.ac.id/index.php/ILKOM/article/view/2254
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850032962228191232
author Fredianto Nurcakhyadi
Arief Hermawan
author_facet Fredianto Nurcakhyadi
Arief Hermawan
author_sort Fredianto Nurcakhyadi
collection DOAJ
description Hospitals are healthcare institutions that play an important role in providing health services to the community. To optimize the service, hospitals need to predict the number of outpatient visits. The objectives of this research are (1) determine the effect of window size on the accuracy of predicting the number of outpatient visits, and (2) identify the best window size and accuracy of neural networks in predicting the daily number of outpatient visits. To achieve the research objectives, the following steps were undertaken: data collection of outpatient visits at RSUD dr. Soedirman Kebumen from 2018 to 2023, preprocessing, applying different window sizes, modeling neural networks, and testing by calculating the RMSE value for each window size. The test results show that the lowest RMSE for 2018 was 1.267 with a window size of 34, for 2019 was 1.262 with a window size of 34, for 2020 was 1.515 with a window size of 17, for 2021 was 1.81 with a window size of 18, for 2022 was 1.282 with a window size of 20, and for 2023 was 1.263 with a window size of 29. These window sizes indicate the cycle of outpatient visits each year. By understanding these visit cycles, the number of outpatient visits can be predicted at any time.
format Article
id doaj-art-3692ae4f24454d8d9b04bcbbe117538d
institution DOAJ
issn 2087-1716
2548-7779
language English
publishDate 2024-08-01
publisher Fakultas Ilmu Komputer UMI
record_format Article
series Ilkom Jurnal Ilmiah
spelling doaj-art-3692ae4f24454d8d9b04bcbbe117538d2025-08-20T02:58:25ZengFakultas Ilmu Komputer UMIIlkom Jurnal Ilmiah2087-17162548-77792024-08-0116217218310.33096/ilkom.v16i2.2254.172-183641Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient VisitsFredianto Nurcakhyadi0Arief Hermawan1University of Technology YogyakartaUniversity of Technology YogyakartaHospitals are healthcare institutions that play an important role in providing health services to the community. To optimize the service, hospitals need to predict the number of outpatient visits. The objectives of this research are (1) determine the effect of window size on the accuracy of predicting the number of outpatient visits, and (2) identify the best window size and accuracy of neural networks in predicting the daily number of outpatient visits. To achieve the research objectives, the following steps were undertaken: data collection of outpatient visits at RSUD dr. Soedirman Kebumen from 2018 to 2023, preprocessing, applying different window sizes, modeling neural networks, and testing by calculating the RMSE value for each window size. The test results show that the lowest RMSE for 2018 was 1.267 with a window size of 34, for 2019 was 1.262 with a window size of 34, for 2020 was 1.515 with a window size of 17, for 2021 was 1.81 with a window size of 18, for 2022 was 1.282 with a window size of 20, and for 2023 was 1.263 with a window size of 29. These window sizes indicate the cycle of outpatient visits each year. By understanding these visit cycles, the number of outpatient visits can be predicted at any time.https://jurnal.fikom.umi.ac.id/index.php/ILKOM/article/view/2254artificial neural networkoutpatientpredictionwindowing
spellingShingle Fredianto Nurcakhyadi
Arief Hermawan
Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits
Ilkom Jurnal Ilmiah
artificial neural network
outpatient
prediction
windowing
title Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits
title_full Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits
title_fullStr Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits
title_full_unstemmed Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits
title_short Optimizing Windowing Techniques to Improve the Accuracy of Artificial Neural Networks in Predicting Outpatient Visits
title_sort optimizing windowing techniques to improve the accuracy of artificial neural networks in predicting outpatient visits
topic artificial neural network
outpatient
prediction
windowing
url https://jurnal.fikom.umi.ac.id/index.php/ILKOM/article/view/2254
work_keys_str_mv AT frediantonurcakhyadi optimizingwindowingtechniquestoimprovetheaccuracyofartificialneuralnetworksinpredictingoutpatientvisits
AT ariefhermawan optimizingwindowingtechniquestoimprovetheaccuracyofartificialneuralnetworksinpredictingoutpatientvisits