In recent years online shopping has gained momentum and became an important venue for customers wishing to save time and simplify their shopping process. A key advantage of shopping online is the ability to read what other customers are saying about products of interest. In this work, we aim to maintain this advantage in situations where extreme brevity is needed, for example, when shopping by voice. We suggest a novel task of extracting a single representative helpful sentence from a set of reviews for a given product. The selected sentence should meet two conditions: first, it should be helpful for a purchase decision and second, the opinion it expresses should be supported by multiple reviewers. This task is closely related to the task of Multi Document Summarization in the product reviews domain but differs in its objective and its level of conciseness. We collect a dataset in English of sentence helpfulness scores via crowd-sourcing and demonstrate its reliability despite the inherent subjectivity involved. Next, we describe a complete model that extracts representative helpful sentences with positive and negative sentiment towards the product and demonstrate that it outperforms several baselines.
翻译:近些年来,网上购物已获得势头,成为希望节省时间和简化购物过程的客户的一个重要场所。网上购物的一个主要优势是能够阅读其他客户对感兴趣产品的看法。在这项工作中,我们的目标是在需要极端简洁的情况下保持这种优势,例如当需要以声音购物时。我们建议一项新颖的任务,即从对特定产品的一系列审查中抽出一个有帮助的有代表性的句子。选定的句子应满足两个条件:第一,购买决定应有所帮助;第二,它所表达的意见应得到多个审查者的支持。这项任务与产品审查领域的多份文件汇总任务密切相关,但在目标和简洁程度方面有差异。我们收集了一组英文句子,通过众包收集了有用的评分,并表明其可靠性,尽管涉及固有的主观性。我们描述了一个完整的模型,用对产品的积极和消极情绪摘录有帮助的句子,并表明它超越了几个基线。