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Time series model for forecasting the number of new admission inpatients
by
Zhao, Ping
, Huang, Hao
, Cheng, Cheng
, Zhou, Lingling
, Wu, Dongdong
in
Artificial neural networks
/ Autoregressive models
/ China
/ Data processing
/ Disease
/ Errors
/ Fever
/ Forecasting
/ Forecasting - methods
/ Forecasts and trends
/ Hand-foot-and-mouth disease
/ Health care
/ Health Informatics
/ Hospitals
/ Humans
/ Hybrid model
/ Information Systems and Communication Service
/ Inpatients - statistics & numerical data
/ machine learning
/ Management of Computing and Information Systems
/ Mean square errors
/ Medical research
/ Medicine
/ Medicine & Public Health
/ modeling
/ Modelling
/ Models, Theoretical
/ NARNN model
/ Neural networks
/ Neural Networks (Computer)
/ New admission inpatients
/ Patient Admission - statistics & numerical data
/ Patient satisfaction
/ Research Article
/ Root-mean-square errors
/ Sales forecasting
/ SARIMA model
/ Schistosomiasis
/ Statistical analysis
/ technology
/ Testing time
/ Time series
/ Time series forecasting
/ Tropical diseases
2018
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Time series model for forecasting the number of new admission inpatients
by
Zhao, Ping
, Huang, Hao
, Cheng, Cheng
, Zhou, Lingling
, Wu, Dongdong
in
Artificial neural networks
/ Autoregressive models
/ China
/ Data processing
/ Disease
/ Errors
/ Fever
/ Forecasting
/ Forecasting - methods
/ Forecasts and trends
/ Hand-foot-and-mouth disease
/ Health care
/ Health Informatics
/ Hospitals
/ Humans
/ Hybrid model
/ Information Systems and Communication Service
/ Inpatients - statistics & numerical data
/ machine learning
/ Management of Computing and Information Systems
/ Mean square errors
/ Medical research
/ Medicine
/ Medicine & Public Health
/ modeling
/ Modelling
/ Models, Theoretical
/ NARNN model
/ Neural networks
/ Neural Networks (Computer)
/ New admission inpatients
/ Patient Admission - statistics & numerical data
/ Patient satisfaction
/ Research Article
/ Root-mean-square errors
/ Sales forecasting
/ SARIMA model
/ Schistosomiasis
/ Statistical analysis
/ technology
/ Testing time
/ Time series
/ Time series forecasting
/ Tropical diseases
2018
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Time series model for forecasting the number of new admission inpatients
by
Zhao, Ping
, Huang, Hao
, Cheng, Cheng
, Zhou, Lingling
, Wu, Dongdong
in
Artificial neural networks
/ Autoregressive models
/ China
/ Data processing
/ Disease
/ Errors
/ Fever
/ Forecasting
/ Forecasting - methods
/ Forecasts and trends
/ Hand-foot-and-mouth disease
/ Health care
/ Health Informatics
/ Hospitals
/ Humans
/ Hybrid model
/ Information Systems and Communication Service
/ Inpatients - statistics & numerical data
/ machine learning
/ Management of Computing and Information Systems
/ Mean square errors
/ Medical research
/ Medicine
/ Medicine & Public Health
/ modeling
/ Modelling
/ Models, Theoretical
/ NARNN model
/ Neural networks
/ Neural Networks (Computer)
/ New admission inpatients
/ Patient Admission - statistics & numerical data
/ Patient satisfaction
/ Research Article
/ Root-mean-square errors
/ Sales forecasting
/ SARIMA model
/ Schistosomiasis
/ Statistical analysis
/ technology
/ Testing time
/ Time series
/ Time series forecasting
/ Tropical diseases
2018
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Time series model for forecasting the number of new admission inpatients
Journal Article
Time series model for forecasting the number of new admission inpatients
2018
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Overview
Background
Hospital crowding is a rising problem, effective predicting and detecting managment can helpful to reduce crowding. Our team has successfully proposed a hybrid model combining both the autoregressive integrated moving average (ARIMA) and the nonlinear autoregressive neural network (NARNN) models in the schistosomiasis and hand, foot, and mouth disease forecasting study. In this paper, our aim is to explore the application of the hybrid ARIMA-NARNN model to track the trends of the new admission inpatients, which provides a methodological basis for reducing crowding.
Methods
We used the single seasonal ARIMA (SARIMA), NARNN and the hybrid SARIMA-NARNN model to fit and forecast the monthly and daily number of new admission inpatients. The root mean square error (RMSE), mean absolute error (MAE) and mean absolute percentage error (MAPE) were used to compare the forecasting performance among the three models. The modeling time range of monthly data included was from January 2010 to June 2016, July to October 2016 as the corresponding testing data set. The daily modeling data set was from January 4 to September 4, 2016, while the testing time range included was from September 5 to October 2, 2016.
Results
For the monthly data, the modeling RMSE and the testing RMSE, MAE and MAPE of SARIMA-NARNN model were less than those obtained from the single SARIMA or NARNN model, but the MAE and MAPE of modeling performance of SARIMA-NARNN model did not improve. For the daily data, all RMSE, MAE and MAPE of NARNN model were the lowest both in modeling stage and testing stage.
Conclusions
Hybrid model does not necessarily outperform its constituents’ performances. It is worth attempting to explore the reliable model to forecast the number of new admission inpatients from different data.
Publisher
BioMed Central,BioMed Central Ltd,Springer Nature B.V,BMC
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