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Destination eWOM: A macro and meso network approach?

机译:目标eWOM:宏和中观网络方法?

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The purpose of this paper is to develop a framework that describes the characteristics and the underlying drivers of publically shared electronic word-of-mouth (eWOM) for destinations. Tweets about a destination were collected while the destination hosted a hallmark event over a 5-year period (2011-2015). In each year, interactions on Twitter were analysed using macro and meso-level social network analysis to identify the network structure and hubs of eWOM activity. A K means clustering algorithm was then applied to create clusters of nodes with similar characteristics and eWOM content within each cluster was analysed using automated content analysis. The resulting model indicates that destination and event eWOM maintains a macro network structure in which a small number of accounts or hubs influence information sharing. Hub characteristics evolve over time, whereas eWOM content can fluctuate in response to emergent destination activities. (C) 2017 The Authors. Published by Elsevier Ltd.
机译:本文的目的是开发一个框架,该框架描述目的地的公共共享电子口碑(eWOM)的特征和潜在驱动因素。在目标举办了为期5年(2011-2015年)的标志性活动的同时,收集了有关目标的推文。每年,都使用宏观和中观社交网络分析对Twitter上的互动进行分析,以识别网络结构和eWOM活动的中心。然后应用K均值聚类算法创建具有相似特征的节点集群,并使用自动内容分析对每个集群内的eWOM内容进行分析。结果模型表明,目的地和事件eWOM维护着一个宏网络结构,其中少量帐户或集线器会影响信息共享。枢纽的特性会随着时间而变化,而eWOM的内容可能会随着目的地活动的发生而波动。 (C)2017作者。由Elsevier Ltd.发布

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