{"title":"Application of the Real-Time Tourism Data in Nowcasting the Service Consumption in Taiwan","authors":"C. Ting, Yi-Long Hsiao, Rui Su","doi":"10.47260/jafb/1244","DOIUrl":null,"url":null,"abstract":"Abstract In this paper, we examined the relationship between tourism and service consumption in Taiwan. The service consumption in Taiwan is nowcasted with the real-time tourism data in Google Trends database. We used the high-frequency internet-searching tourism data to predict the low-frequency service consumption data, for the real-time data with rich information could enhance prediction accuracy. Applying the Principal Components Analysis (PCA), we used the internet-searching tourism keywords in Google Trends database to construct the diffusion indices. Following the classification of the tourism keywords in Matsumoto et al. (2013), we classified those keywords into five groups and twenty-nine classifications. We focused on the reciprocal reactions between those diffusion indices with service consumption to conclude which component has higher influence on service consumption in Taiwan. Our empirical results indicated that the keywords in “Recreational areas, and Travel-related” group have significant effects on service consumption in Taiwan via nowcasting. Among the components of those diffusion indices, “Farm, Travel insurance, and Visitor center” are important variables with higher weights in common. JEL classification numbers: C60, C80, E01, E2, E60. Keywords: Nowcasting, the Principal Components Analysis (PCA), Service Consumption, Tourism.","PeriodicalId":330012,"journal":{"name":"Journal of Applied Finance & Banking","volume":"94 ","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-04-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Applied Finance & Banking","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.47260/jafb/1244","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1
Abstract
Abstract In this paper, we examined the relationship between tourism and service consumption in Taiwan. The service consumption in Taiwan is nowcasted with the real-time tourism data in Google Trends database. We used the high-frequency internet-searching tourism data to predict the low-frequency service consumption data, for the real-time data with rich information could enhance prediction accuracy. Applying the Principal Components Analysis (PCA), we used the internet-searching tourism keywords in Google Trends database to construct the diffusion indices. Following the classification of the tourism keywords in Matsumoto et al. (2013), we classified those keywords into five groups and twenty-nine classifications. We focused on the reciprocal reactions between those diffusion indices with service consumption to conclude which component has higher influence on service consumption in Taiwan. Our empirical results indicated that the keywords in “Recreational areas, and Travel-related” group have significant effects on service consumption in Taiwan via nowcasting. Among the components of those diffusion indices, “Farm, Travel insurance, and Visitor center” are important variables with higher weights in common. JEL classification numbers: C60, C80, E01, E2, E60. Keywords: Nowcasting, the Principal Components Analysis (PCA), Service Consumption, Tourism.
摘要本文以台湾地区为研究对象,探讨旅游与服务消费的关系。利用Google趋势数据库中的实时旅游数据,实时预测台湾地区的服务消费。利用高频搜索旅游数据对低频服务消费数据进行预测,因为数据实时性强,信息丰富,可以提高预测精度。运用主成分分析(PCA)方法,利用Google趋势数据库中的互联网搜索旅游关键词构建扩散指数。根据Matsumoto et al.(2013)对旅游关键词的分类,我们将这些关键词分为五组和二十九类。我们研究了这些扩散指数与服务消费之间的相互作用,以得出哪个成分对台湾服务消费的影响更大。实证结果显示,“游憩区、旅游相关”组关键词对临近投射服务消费有显著影响。在这些扩散指数的组成部分中,“农场”、“旅游保险”和“游客中心”是权重较高的重要变量。JEL分类号:C60、C80、E01、E2、E60。关键词:临近预报,主成分分析,服务消费,旅游