约旦大安曼市著名旅游住宿的时空聚类分析

IF 5.3 3区 管理学 Q1 HOSPITALITY, LEISURE, SPORT & TOURISM Journal of Hospitality and Tourism Technology Pub Date : 2023-05-08 DOI:10.1108/jhtt-03-2021-0071
Saad Al-Saad, Rana N. Jawarneh, A. Aloudat
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引用次数: 2

摘要

为了检验来自社交旅游网站的用户生成内容(UGC)对在线声誉管理的适用性,本研究的目的是分析知名酒店(基于TripAdvisor Best-Value指标)和知名户外座位餐厅(基于排名指标)的空间聚类。本研究使用数据挖掘技术从TripAdvisor获取用户原创内容。采用基于层次密度的空间聚类算法(HDBSCAN)进行鲁棒性聚类分析。研究结果本研究的结果显示,性价比最高的酒店和声誉良好的露天餐厅最有可能位于城市旅游目的地的中心区及其周围,因为那里的人口和经济活动都比较密集。BV酒店的时空聚类分析形成了不同规模、密度和形状格局的聚类。研究局限/启示本研究表明,著名的酒店和餐馆(H&Rs)集中在历史悠久的城市中心附近的地区。这应成为推动城市投资环境应用研究的动力。研究结果将为企业家和潜在投资者选择最具吸引力的旅游投资环境提供理性指导。原创性/价值利用UGC分析人力资源资源空间聚类的研究较少。因此,据作者所知,本研究首次绘制和分析了知名酒店(TripAdvisor BV指标)和餐厅(排名指标)的时空聚类模式。因此,本研究通过数据挖掘和HDBSCAN算法展示了H&Rs聚类的模式变化,为城市旅游研究做出了重要的方法论贡献。
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Spatiotemporal cluster analysis of reputable tourist accommodation in Greater Amman Municipality, Jordan
Purpose To test the applicability of the user-generated content (UGC) derived from social travel network sites for online reputation management, the purpose of this study is to analyze the spatial clustering of the reputable hotels (based on the TripAdvisor Best-Value indicator) and reputable outdoor seating restaurants (based on ranking indicator). Design/methodology/approach This study used data mining techniques to obtain the UGC from TripAdvisor. The Hierarchical Density-Based Spatial Clustering method based on algorithm (HDBSCAN) was used for robust cluster analysis. Findings The findings of this study revealed that best value (BV) hotels and reputable outdoor seating restaurants are most likely to be located in and around the central districts of the urban tourist destinations where population and economic activities are denser. BV hotels' spatiotemporal cluster analysis formed clusters of different sizes, densities and shape patterns. Research limitations/implications This study showed that reputable hotels and restaurants (H&Rs) are concentrated within districts near historic city centers. This should be an impetus for applied research on urban investment environments. Practical implications The findings would be rational guidance for entrepreneurs and potential investors on the most attractive tourism investment environments. Originality/value There has been a lack of studies focusing on analyzing the spatial clustering of the H&Rs using UGC. Therefore, to the best of the authors’ knowledge, this study is the first to map and analyze the spatiotemporal clustering patterns of reputable hotels (TripAdvisor BV indicator) and restaurants (ranking indicator). As such, this study makes a significant methodological contribution to urban tourism research by showing pattern change in H&Rs clustering using data mining and the HDBSCAN algorithm.
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来源期刊
Journal of Hospitality and Tourism Technology
Journal of Hospitality and Tourism Technology HOSPITALITY, LEISURE, SPORT & TOURISM-
CiteScore
8.40
自引率
12.80%
发文量
41
期刊介绍: The Journal of Hospitality and Tourism Technology is the only journal dedicated solely for research in technology and e-business in tourism and hospitality. It is a bridge between academia and industry through the intellectual exchange of ideas, trends and paradigmatic changes in the fields of hospitality, IT and e-business. It covers: -E-Marketplaces, electronic distribution channels, or e-Intermediaries -Internet or e-commerce business models -Self service technologies -E-Procurement -Social dynamics of e-communication -Relationship Development and Retention -E-governance -Security of transactions -Mobile/Wireless technologies in commerce -IT control and preparation for disaster -Virtual reality applications -Word of Mouth. -Cross-Cultural differences in IT use -GPS and Location-based services -Biometric applications -Business intelligence visualization -Radio Frequency Identification applications -Service-Oriented Architecture of business systems -Technology in New Product Development
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