Characterizing and Identifying Socially Shared Self-Descriptions in Product Reviews

Lu Sun, F. M. Harper, Chia-Jung Lee, Vanessa Murdock, Bárbara Poblete
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Abstract

Online e-commerce product reviews can be highly influential in a customer's decision-making processes. Reviews often describe personal experiences with a product and provide candid opinions about a product's pros and cons. In some cases, reviewers choose to share information about themselves, just as they might do in social platforms. These descriptions are a valuable source of information about who finds a product most helpful. Customers benefit from key insights about a product from people with their same interests and sellers might use the information to better serve their customers needs. In this work, we present a comprehensive look into voluntary self-descriptive information found in public customer reviews. We analyzed what people share about themselves and how this contributes to their product opinions. We developed a taxonomy of types of self-descriptions, and a machine-learned classification model of reviews according to this taxonomy. We present new quantitative findings, and a thematic study of the perceived purpose descriptions in reviews.
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表征和识别产品评论中社会共享的自我描述
在线电子商务产品评论对客户的决策过程有很大的影响。评论通常描述个人使用产品的经历,并对产品的优缺点提供坦率的意见。在某些情况下,评论者选择分享自己的信息,就像他们在社交平台上所做的那样。这些描述是一个有价值的信息来源,告诉你谁觉得产品最有用。客户可以从与他们有相同兴趣的人那里获得关于产品的关键见解,而卖家可能会利用这些信息更好地满足客户的需求。在这项工作中,我们对在公众客户评论中发现的自愿自我描述信息进行了全面的研究。我们分析了人们分享自己的内容,以及这些内容如何影响他们对产品的看法。我们开发了一种自我描述类型的分类法,并根据这种分类法建立了一个机器学习的评论分类模型。我们提出了新的定量发现,并对评论中的感知目的描述进行了专题研究。
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