Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data
In recent years, severe competition is executed on getting air cargos. The forecast of the number of taking-off and landing is expanding. Strict marketing is required in such fields. Forecasting the trend of air cargo is an essential item to be investigated in airlines. In order to make forecast f...
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doaj-7656a7dc473d4b828071e309c381be002020-11-24T21:08:53ZengOperations research society of TaiwanInternational Journal of Operations Research1813-713X1813-71482017-06-011426575Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily DataYuki Higuchi0Yuta Tsuchida1Tatsuhiro Kuroda2Kazuhiro Takeyasu3Faculty of Business Administration, Setsunan University 17-8, Ikeda-nakamachi, Neyagawa, Osaka 572-8508, JapanFaculty of Engineering, Osaka Prefecture University, 1-1, Gakuencho, Naka-ku, Sakai, Osaka 599-8531, Japan Faculty of Economics, Osaka Prefecture University, 1-1, Gakuencho, Naka-ku, Sakai, Osaka 599-8531, Japan College of Business Administration, Tokoha University, 325 Oobuchi, Fuji City, Shizuoka 417-0801, Japan In recent years, severe competition is executed on getting air cargos. The forecast of the number of taking-off and landing is expanding. Strict marketing is required in such fields. Forecasting the trend of air cargo is an essential item to be investigated in airlines. In order to make forecast for time series, the method of using linear model is often used. Forecasting using neural network is also developed. Reviewing past researches, there are many researches made on this. There is many room to improve in neural network, therefore we make focus on them. We use time series data, and in order to make forecast, a new coming data should be handled and the parameter should be estimated based upon its data. This is a so-called on-line parameter estimation. In this paper, neural network is applied and Multilayer perceptron Algorithm is newly developed. The method is applied to the Airlines Cargo Data in the case of Daily data. When there is a big change of the data, the neural networks cannot learn the past data properly, therefore we have devised a new method to cope with this. Repeating the data into plural section, smooth change is established and we could make a neural network learn more smoothly. The result is compared with the method of ARIMA model. The forecasting results are measured by the Forecasting Accuracy Ratio which is the measure of the normalized residual part of the forecasting error. Good results were obtained. The new method shows that it is useful for the time series that has various trend characteristics and has rather strong seasonal trend. The effectiveness of this method should be examined in various cases. http://www.orstw.org.tw/ijor/vol14no2/IJOR2017_vol14_no2_p65_p75.pdfforecastingneural networktime series analysisARIMA model |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yuki Higuchi Yuta Tsuchida Tatsuhiro Kuroda Kazuhiro Takeyasu |
spellingShingle |
Yuki Higuchi Yuta Tsuchida Tatsuhiro Kuroda Kazuhiro Takeyasu Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data International Journal of Operations Research forecasting neural network time series analysis ARIMA model |
author_facet |
Yuki Higuchi Yuta Tsuchida Tatsuhiro Kuroda Kazuhiro Takeyasu |
author_sort |
Yuki Higuchi |
title |
Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data |
title_short |
Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data |
title_full |
Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data |
title_fullStr |
Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data |
title_full_unstemmed |
Improving Forecasting Accuracy by Neural Network Applying to the Airlines Cargo Data in the Case of Daily Data |
title_sort |
improving forecasting accuracy by neural network applying to the airlines cargo data in the case of daily data |
publisher |
Operations research society of Taiwan |
series |
International Journal of Operations Research |
issn |
1813-713X 1813-7148 |
publishDate |
2017-06-01 |
description |
In recent years, severe competition is executed on getting air cargos. The forecast of the number of
taking-off and landing is expanding. Strict marketing is required in such fields. Forecasting the trend of air cargo is
an essential item to be investigated in airlines. In order to make forecast for time series, the method of using linear
model is often used. Forecasting using neural network is also developed. Reviewing past researches, there are many
researches made on this. There is many room to improve in neural network, therefore we make focus on them. We
use time series data, and in order to make forecast, a new coming data should be handled and the parameter should
be estimated based upon its data. This is a so-called on-line parameter estimation. In this paper, neural network is
applied and Multilayer perceptron Algorithm is newly developed. The method is applied to the Airlines
Cargo Data in the case of Daily data. When there is a big change of the data, the neural networks cannot
learn the past data properly, therefore we have devised a new method to cope with this. Repeating the data
into plural section, smooth change is established and we could make a neural network learn more smoothly.
The result is compared with the method of ARIMA model. The forecasting results are measured by the
Forecasting Accuracy Ratio which is the measure of the normalized residual part of the forecasting error.
Good results were obtained. The new method shows that it is useful for the time series that has various trend
characteristics and has rather strong seasonal trend. The effectiveness of this method should be examined in various
cases. |
topic |
forecasting neural network time series analysis ARIMA model |
url |
http://www.orstw.org.tw/ijor/vol14no2/IJOR2017_vol14_no2_p65_p75.pdf |
work_keys_str_mv |
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1716759066437484544 |