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A big data exploration of the informational and normative influences on the helpfulness of online restaurant reviews

机译:关于在线餐厅助人的信息和规范影响的大数据探讨

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摘要

With the proliferation of user generated online reviews, uncovering helpful restaurant reviews is increasingly challenging for potential consumers. Heuristics (such as "Likes") not only facilitate this process but also enhance the social impact of a review on an Online Opinion Platform. Based on Dual Process Theory and Social Impact Theory, this study explores which contextual and descriptive attributes of restaurant reviews influence the reviewee to accept a review as helpful and thus, "Like" the review. Utilising both qualitative and quantitative methodologies, a big data sample of 58,468 restaurant reviews on Zomato were analysed. Results revealed the informational factor of positive recommendation framing and the normative factors of strong argument quality and moderate recommendation ratings, influence the generation of a reviewee "Like". This study highlights the important filtering function a heuristic can offer prospective customers which can also result in greater social impact for the Online Opinion Platform.
机译:随着用户生成的在线评论的扩散,揭示有助于的餐厅评论越来越挑战潜在的消费者。启发式(如“喜欢”)不仅促进了这个过程,而且还提升了对在线意见平台的审查的社会影响。基于双程理论和社会影响理论,本研究探讨了餐厅评论影响审核人的审查,从而探讨了审核,从而探讨了“比如”审查。利用定性和定量方法,分析了Zomato的58,468餐厅评论的大数据样本。结果揭示了积极推荐框架的信息因素,强大的论证质量和中等推荐评级的规范因素,影响了审核人的一代“喜欢”。本研究突出了启发式的重要过滤功能,启发式可以提供潜在客户,这也可能导致在线意见平台的更大的社会影响。

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