Reputation assessment and visitor arrival forecasts for data driven tourism attractions assessment

Q1 Social Sciences Online Social Networks and Media Pub Date : 2023-09-01 DOI:10.1016/j.osnem.2023.100274
Enrico Collini, Paolo Nesi, Gianni Pantaleo
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引用次数: 0

Abstract

Tourism is vital for most historical and cultural cities. In the context of Smart Cities, there are numerous data sources in tourism domain that could be analyzed to monitor and forecast a range of different indicators related to touristic locations and attractions. In this paper, we propose a framework which exploits social media and big data to forecast both online reputation and touristic attraction presences. To this end, some techniques have been tested and proposed on the basis of machine learning, deep learning, causality assessment and explainable Artificial Intelligence, so as to provide evidence of the relevant variables for each prediction and estimation. An approach has been introduced to analyze the explainability of the proposed solutions, i.e., a multilingual sentiment analysis tool for social media data based on transformers to compare data sources as Trip Advisor and Twitter. Furthermore, causality analysis has been performed to evaluate the temporal impact of social media posts and other factors with respect to the number of presences. The work has been developed in the context of Herit-Data, a European Commission funded project on the exploitation of big data for tourism management and based on the Snap4City infrastructure and platform. Herit-Data has developed solutions for 6 major European touristic locations. In this paper, some of the solutions developed for Florence, Italy and Pont du Gard, France, are reported.

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基于数据驱动的旅游景点评价的声誉评价和游客到达预测
旅游业对大多数历史文化名城至关重要。在智慧城市的背景下,旅游领域有许多数据源,可以通过分析来监测和预测与旅游地点和景点相关的一系列不同指标。在本文中,我们提出了一个利用社交媒体和大数据来预测在线声誉和旅游景点存在的框架。为此,在机器学习、深度学习、因果关系评估和可解释人工智能的基础上,已经测试和提出了一些技术,为每一次预测和估计提供相关变量的证据。本文引入了一种方法来分析所提出的解决方案的可解释性,即基于转换器的社交媒体数据的多语言情感分析工具,以比较Trip Advisor和Twitter等数据源。此外,还进行了因果分析,以评估社交媒体帖子和其他因素对存在数量的时间影响。这项工作是在heritage - data的背景下开展的,heritage - data是欧盟委员会资助的一个项目,旨在利用大数据进行旅游管理,并基于Snap4City基础设施和平台。heritage - data为欧洲6个主要旅游景点开发了解决方案。本文介绍了为意大利佛罗伦萨和法国加尔桥开发的一些解决方案。
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来源期刊
Online Social Networks and Media
Online Social Networks and Media Social Sciences-Communication
CiteScore
10.60
自引率
0.00%
发文量
32
审稿时长
44 days
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