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Analyzing online reviews in hospitality: data-driven opportunities for predicting the sharing of negative emotional content

机译:分析酒店业中的在线评论:预测负面情感内容共享的数据驱动机会

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摘要

Hospitality is one of the sectors that are nowadays most heavily characterized by consumers' tendency to share online reviews on dedicated digital platforms. While most past work has focused on understanding the effect of online reviews and ratings on consumers' evaluation and purchase decisions, this research tackles the issue of what drives the sharing of certain types of online content. Specifically, we investigate the sharing of user-generated content characterized by negative emotional valence, and study the effect of two factors on the extent to which user-generated content contains negative emotions. One such factor is reviewer's expertise, while the other is hotel quality. Our analysis of 1200 TripAdvisor reviews on Italian hotels located in three major Italian cities confirm our hypothesis that expert reviewers might share reviews containing less intense negative emotional content compared to less expert reviewers especially when the hotel is of high quality. To support our hypothesis, we build on the research on psychological antecedents of word-of-mouth behaviour suggesting that expert consumers are particularly reluctant to share negative word-of-mouth to avoid projecting a negative image of themselves in social contexts, thus possibly damaging their reputation.
机译:接待是当今最重要的行业之一,其特点是消费者倾向于在专用数字平台上共享在线评论。尽管过去的大多数工作都集中在了解在线评论和评分对消费者的评估和购买决策的影响,但本研究解决了驱动某些类型的在线内容共享的问题。具体而言,我们调查了以消极情绪价为特征的用户生成内容的共享,并研究了两个因素对用户生成内容包含消极情绪的程度的影响。其中一个因素是审阅者的专业知识,另一个是酒店质量。我们对位于意大利三个主要城市的1200家TripAdvisor酒店进行的1200条TripAdvisor评论的分析证实了我们的假设,即与较少的专家评论者相比,专家评论者所共享的评论可能包含较少的负面情绪内容,尤其是在酒店质量较高的情况下。为了支持我们的假设,我们基于对口碑行为的心理先因的研究,表明专家级消费者特别不愿分享负面的口碑,以避免在社会环境中投射出负面的自我形象,从而可能损害社会他们的声誉。

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