旅游时间序列的人工神经网络预测

J.P. Teixeira , P.O. Fernandes
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引用次数: 29

摘要

本文采用旅游时间序列的调制方法进行预测。在葡萄牙北部地区的酒店登记的旅游收入和过夜总数被用于实验模型。采用不同输入特征和隐节点数的前馈神经网络模型对旅游时间序列进行了预测实验。实证结果表明,专用人工神经网络模型的性能优于具有多个输出的模型。一般来说,使用同一时间序列的前12个值对于获得高质量的预测非常重要。对于旅游收入的预测,外国过夜和贡献国的GDP是相关的。该时间序列的预测误差为4.7%,Pearson相关性为0.98。总过夜数预测误差为6.0%,Pearson相关系数为0.98。国内过夜航班比国外过夜航班更容易预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tourism time series forecast with artificial neural networks

The modulation of tourism time series was used in this work for forecast purposes. The Tourism Revenue and Total Overnights registered in the hotels of the North region of Portugal were used for the experimented models. Several feed-forward Artificial Neural Networks (ANN) models using different input features and number of hidden nodes were experimented to forecast the Tourism time series. Empirical results indicate that the Dedicated ANN models perform better than models with several outputs. Generally the usage of previous 12 values of the same time series is very important to a good quality forecast. For the prediction of Tourism Revenue the Foreign Overnights and GDP of contributing countries are relevant. This time series was predicted with an error of 4.7% and a Pearson correlation of 0.98. The forecast of Total Overnights had an error of 6.0% and Pearson correlation of 0.98. Domestic Overnights are more predictable than Foreign Overnights.

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