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How Opinions are Received by Online Communities: A Case Study on Amazon.com Helpfulness Votes

机译:在线社区如何收集意见:Amazon.com案例投票的案例研究

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摘要

There are many on-line settings in which users publicly express opinions. A number of these offer mechanisms for other users to evaluate these opinions; a canonical example is Amazon.com, where reviews come with annotations like "26 of 32 people found the following review helpful." Opinion evaluation appears in many off-line settings as well, including market research and political campaigns. Reasoning about the evaluation of an opinion is fundamentally different from reasoning about the opinion itself: rather than asking, "What did Y think of X?", we are asking, "What did Z think of Y's opinion of X?" Here we develop a framework for analyzing and modeling opinion evaluation, using a large-scale collection of Amazon book reviews as a dataset. We find that the perceived helpfulness of a review depends not just on its content but also but also in subtle ways on how the expressed evaluation relates to other evaluations of the same product. As part of our approach, we develop novel methods that take advantage of the phenomenon of review "plagiarism" to control for the effects of text in opinion evaluation, and we provide a simple and natural mathematical model consistent with our findings. Our analysis also allows us to distinguish among the predictions of competing theories from sociology and social psychology, and to discover unexpected differences in the collective opinion-evaluation behavior of user populations from different countries.
机译:用户可以在许多在线设置中公开发表意见。其中许多提供了供其他用户评估这些意见的机制;一个典型的例子是Amazon.com,其中的评论带有“ 32人中有26人认为以下评论有用”之类的注释。意见评估也出现在许多离线环境中,包括市场研究和政治运动。关于意见评估的推理与关于意见本身的推理在根本上是不同的:我们不是在问“ Y对X的看法是什么?”,而是在问“ Z对Y对X的看法有什么看法?”。在这里,我们使用大量的Amazon书评集合作为数据集,开发了一个用于分析和评估意见评估的框架。我们发现,评价的感知帮助不仅取决于其内容,而且还取决于所表达的评价如何与同一产品的其他评价相关联。作为我们方法的一部分,我们开发了利用评论“ pla窃”现象来控制文本在意见评估中的效果的新颖方法,并且我们提供了与我们的发现相符的简单自然的数学模型。我们的分析还使我们能够从社会学和社会心理学中区分出竞争理论的预测,并发现来自不同国家的用户群体的集体意见评估行为中出乎意料的差异。

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