使用 ANN 分析旅游相关热词与游客人数之间的相关性:日本案例研究

Jui-Hung Chang, Chien-Yuan Tseng, Ren-Hung Hwang, Mingcao Ma
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引用次数: 2

摘要

谷歌搜索引擎记录了大量与旅游相关的热词。很多人在出国度假前都会上网搜索旅游的四个方面,即吃、穿、住、行。探索旅游相关热词的流行趋势与特定目的地游客数量之间的相关性,对旅游业来说是一个具有潜在价值的研究领域。因此,本研究统计了日本旅游相关词汇在谷歌搜索引擎和电子新闻网站旅游文章中的出现频率。通过这些数据,本研究计算了 "n "个月后赴日旅游的台湾游客人数的皮尔逊相关系数。此外,还建立了深度学习(人工神经网络)模型,研究了旅游相关热词的流行度得分与台湾赴日游客人数区间的关系。研究结果表明,旅游相关热词在谷歌上的受欢迎程度与台湾游客访日人数高度相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using ANN to Analyze the Correlation Between Tourism-Related Hot Words and Tourist Numbers: A Case Study in Japan
Google's search engine has recorded the popularity of a great number of tourism-related hot words. Prior to vacationing, many people will search the four dimensions of tourism, namely food, fashion, accommodation and transportation, on the Internet before an overseas trip. Exploring the correlation between popularity trends of tourism-related hot words and the number of tourists visiting a particular destination is a potentially valuable research area for the tourist industry. Therefore, this study counted the occurrence frequency of words related to Japanese tourism in the Google search engine and in tourism articles on electronic news websites. With these data, it calculated the Pearson correlation coefficient of the number of Taiwanese tourists visiting Japan "n" months later. Additionally, a deep learning (Artificial Neural Network) model was established, and the relationship between the popularity scores of tourism-related hot words and the interval of the number of Taiwanese tourists in Japan was examined. The research results show that the popularity of tourism-related hot words on Google is highly related to the number of Taiwanese tourists visiting Japan.
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