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Distantly Supervised Attribute Detection from Reviews

机译:远端监督评论的属性检测

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This work aims to detect specific attributes of a place (e.g., if it has a romantic atmosphere, or if it offers outdoor seating) from its user reviews via distant supervision: without direct annotation of the review text, we use the crowdsourced attribute labels of the place as labels of the review text. We then use review-level attention to pay more attention to those reviews related to the attributes. The experimental results show that our attention-based model predicts attributes for places from reviews with over 98% accuracy. The attention weights assigned to each review provide explanation of capturing relevant reviews.
机译:这项工作旨在检测一个地方的特定属性(例如,如果它具有浪漫的气氛,或者如果它提供户外座位),通过远程监督:如果没有直接注释审查文本,我们使用众包属性标签作为审查文本的标签的地方。然后,我们使用审查级别注意力来更加关注与属性有关的这些评论。实验结果表明,我们的注意力模型预测了从精度超过98%的评论的地方的属性。分配给每次审查的注意力提供了对捕获相关审查的解释。

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