基于主成分分析的上海旅游经济影响因素研究

Jing Zhang, Xue-mei Li
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引用次数: 1

摘要

本文将中国上海旅游增加值作为解释变量进行分析,从经济、服务、游客偏好、交通电信、环境等方面进行分析,选取14个指标。利用2000 - 2017年的数据,运用R对上海旅游经济进行主成分回归分析,并对残差进行检验。由于残差的自相关性,我们选择使用广义最小二乘法进行校正。从分析中可以看出,旅游目的地的经济地位、旅行社数量、游客数量、手机用户数量、星级酒店加权得分、旅游目的地环境质量对上海旅游经济的影响在18年间呈现出由强到弱的趋势。结果表明,以两主成分为自变量建立的回归模型具有良好的拟合效果。主成分回归分析建立的模型具有一定的有效性,对预测旅游增加值具有一定的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on the Influencing Factors of Tourism Economy in Shanghai Based on Principal Component Analysis
This paper analyzes the value added of tourism in Shanghai, China as an explanatory variable, and analyzes it from the aspects of economy, service, tourist preference, transportation and telecommunications, and environment, and then selects 14 indicators. We used data from 2000 to 2017, using R to conduct a principal component regression analysis of the Shanghai tourism economy, and tested the residuals. Due to the autocorrelation of the residuals, we chose to use the generalized least squares method for correction. It can be seen from the analysis that the economic status of tourist destinations, the number of travel agencies, the number of tourists, the number of mobile phone users, the weighted scores of star-rated hotels, and the environmental quality of travel destinations have an effect on the tourism economy of Shanghai in 18 years, which is from strong to weak. The results show that the regression model established by the two principal components as independent variables has a good fitting effect. The model established by principal component regression analysis has certain validity and has certain value for predicting the added value of tourism.
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