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Using social network and semantic analysis to analyze online travel forums and forecast tourism demand

机译:使用社交网络和语义分析来分析在线旅游论坛并预测旅游需求

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摘要

Forecasting tourism demand has important implications for both policy makers and companies operating in the tourism industry. In this research, we applied methods and tools of social network and semantic analysis to study user-generated content retrieved from online communities which interacted on the TripAdvisor travel forum. We analyzed the forums of 7 major European capital cities, over a period of 10 years, collecting more than 2,660,000 posts, written by about 147,000 users. We present a new methodology of analysis of tourism-related big data and a set of variables which could be integrated into traditional forecasting models. We implemented Factor Augmented Autoregressive and Bridge models with social network and semantic variables which often led to a better forecasting performance than univariate models and models based on Google Trend data. Forum language complexity and the centralization of the communication network - i.e. the presence of eminent contributors were - the variables that contributed more to the forecasting of international airport arrivals.
机译:预测旅游需求对决策者和从事旅游业的公司都具有重要意义。在这项研究中,我们应用了社交网络和语义分析的方法和工具来研究从在TripAdvisor的旅游论坛上进行交互的在线社区检索的用户生成的内容。我们对欧洲7个主要首都城市的论坛进行了为期10年的分析,收集了266万个帖子,约147,000位用户撰写了文章。我们提出了一种与旅游相关的大数据分析的新方法,以及可以整合到传统预测模型中的一组变量。我们使用社交网络和语义变量实施了因子增强自回归和桥梁模型,与单变量模型和基于Google趋势数据的模型相比,这些模型通常可带来更好的预测性能。论坛语言的复杂性和通信网络的集中化-即杰出的贡献者的存在-这些变量对预测国际机场的到来做出了更大的贡献。

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