预测旅游人数的混合方法

Mei-Li Shen, Hsiou-Hsiang Liu, Yi-Hsiang Lien, Cheng-Feng Lee, Cheng-Hong Yang
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引用次数: 2

摘要

对于旅游业来说,准确预测旅游需求对于满足相关需求、向政府提供相关信息以及使利益相关者能够调整计划和政策至关重要。本研究设计了一种结合特征选择、支持向量回归和粒子群优化(FS-PSOSVR)的方法来预测新加坡游客。使用1978年1月至2017年12月的新加坡每月游客人数作为测试数据集。结果表明,通过FS-PSOSVR得到的误差小于其他方法,表明FS-PSOSVR是一种有效的旅游需求预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Approach for Forecasting Tourist Arrivals
For the tourism industry, accurate forecasts of travel needs are essential to meeting relevant needs, providing pertinent information to the government, and enabling stakeholders to adjust plans and policies. This study devised an approach that combines feature selection and support vector regression with particle swarm optimization (FS-PSOSVR) to forecast tourists to Singapore. The monthly tourist arrivals to Singapore from January 1978 to December 2017 were utilized as a test dataset. The results showed that the error obtained through FS-PSOSVR was smaller than that through other methods, revealing that FS-PSOSVR is an effective method for predicting tourism demand.
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