Demand Forecasting Models of Tourism Based on ELM

Xinquan Wang, Hao-yuan Zhang, Xiaoling Guo
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引用次数: 4

Abstract

In order to realize the more accurate prediction of annual tourism, use the synthetic index method to calculate the tourism market boom index, after timing phase space reconstruction, merge the original travel data and the tourism market boom index to get the sample, using extreme learning machine algorithm to train sample data, finally get the demand forecasting model of tourism in Liaoning province based on ELM. By comparing the support vector regression algorithm show that: the model based on extreme learning machine algorithm make higher precision, better fitting degree, can more accurately estimate and forecast the tourism market, the application of this model can provide guidance for the tourism market to achieve a reasonable allocation of resources and healthy development.
基于ELM的旅游需求预测模型
为了实现对年旅游需求更准确的预测,采用综合指数法计算旅游市场景气度指数,经过时序相空间重构,将原始旅游数据与旅游市场景气度指数合并得到样本,利用极限学习机算法对样本数据进行训练,最终得到基于ELM的辽宁省旅游需求预测模型。通过对支持向量回归算法的比较表明:基于极限学习机算法的模型精度更高,拟合程度更好,可以更准确地估计和预测旅游市场,该模型的应用可以为旅游市场实现资源的合理配置和健康发展提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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