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Mining Worse and Better Opinions - Unsupervised and Agnostic Aggregation of Online Reviews

机译:挖掘更严重和更好的意见 - 在线评论的无监督和不可知论的聚合

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In this paper, we propose a novel approach for aggregating online reviews, according to the opinions they express. Our methodology is unsupervised, due to the fact that it does not rely on pre-labeled reviews, and it is agnostic, since it does not make any assumption about the domain or the language of the review content. We measure the adherence of a review content to the domain terminology extracted from a review set. First, we demonstrate the informativeness of the adherence metric with respect to the score associated with a review. Then, we exploit the metric values to group reviews, according to the opinions they express. Our experimental campaign has been carried out on two large datasets collected from Booking and Amazon, respectively.
机译:在本文中,根据他们表达的意见,我们提出了一种用于聚合在线评论的新方法。由于它不依赖于预先标记的评论,我们的方法是无人监督的,因为它是不可知论的,因为它没有对域或审查内容的语言作出任何假设。我们衡量审查内容的遵守从审查集中提取的域术语。首先,我们展示了遵守与审查相关联的分数的遵守度量的信息。然后,根据他们表达的意见,我们将公制值利用为分组评论。我们的实验活动分别在预订和亚马逊收集的两个大型数据集上进行了。

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