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Improving the forecasting accuracy of air passenger and air cargo demand: the application of back-propagation neural networks

机译:提高航空客运和航空货运需求的预测准确性:反向传播神经网络的应用

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This study employs back-propagation neural networks (BPN) to improve the forecasting accuracy of air passenger and air cargo demand from Japan to Taiwan. The factors which influence air passenger and air cargo demand are identified, evaluated and analysed in detail. The results reveal that some factors influence both passenger and cargo demand, and the others only one of them. The forecasting accuracy of air passenger and air cargo demand has been improved efficiently by the proposed procedure to evaluate input variables. The established model improves dramatically the forecasting accuracy of air passenger demand with an extremely low mean absolute percentage error (MAPE) of 0.34% and 7.74% for air cargo demand.
机译:本研究使用反向传播神经网络(BPN)来提高从日本到台湾的航空客运和航空货运需求的预测准确性。详细确定,评估和分析影响航空客运和航空货运需求的因素。结果表明,一些因素同时影响客运和货运需求,而其他因素只是其中之一。通过提出的评估输入变量的程序,有效地提高了航空旅客和航空货运需求的预测准确性。建立的模型极大地提高了航空旅客需求的预测准确性,航空货物需求的平均绝对百分比误差(MAPE)极低,仅为0.34%和7.74%。

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