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Modeling Ambiguity, Subjectivity, and Diverging Viewpoints in Opinion Question Answering Systems

机译:歧义,主观性和分歧观点在意见问题答案系统中建模,主观性和分歧观点

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Product review websites provide an incredible lens into the wide variety of opinions and experiences of different people, and play a critical role in helping users discover products that match their personal needs and preferences. To help address questions that can't easily be answered by reading others' reviews, some review websites also allow users to pose questions to the community via a question-answering (QA) system. As one would expect, just as opinions diverge among different reviewers, answers to such questions may also be subjective, opinionated, and divergent. This means that answering such questions automatically is quite different from traditional QA tasks, where it is assumed that a single 'correct' answer is available. While recent work introduced the idea of question-answering using product reviews, it did not account for two aspects that we consider in this paper: (1) Questions have multiple, often divergent, answers, and this full spectrum of answers should somehow be used to train the system, and (2) What makes a 'good' answer depends on the asker and the answerer, and these factors should be incorporated in order for the system to be more personalized. Here we build a new QA dataset with 800 thousand questions-and over 3.1 million answers-and show that explicitly accounting for personalization and ambiguity leads both to quantitatively better answers, but also a more nuanced view of the range of supporting, but subjective, opinions.
机译:产品审查网站提供令人难以置信的镜头,进入各种意见和不同人的经历,并在帮助用户发现符合其个人需求和偏好的产品中发挥关键作用。为帮助通过阅读其他人的评论来解决无法轻易回答的问题,一些审查网站还允许用户通过问答(QA)系统对社区构成问题。正如一个人所期望的那样,就像不同审查员之间的意见一样,这些问题的答案也可能是主观的,自以为是和不同的。这意味着回答这些问题自动与传统的QA任务完全不同,在那里假设可以使用单个“正确”答案。虽然最近的工作介绍了使用产品评论的问答概念,但它没有考虑到我们在本文中考虑的两个方面:(1)问题有多个,通常是不同的,答案,并且应该以某种方式使用这种全部答案为了训练系统,(2)是什么让“良好”答案取决于提问者和答题者,并应纳入这些因素,以便系统更加个性化。在这里,我们建立了一个新的QA数据集,拥有80万个问题 - 超过310万答案 - 并显示出于个性化和歧义的明确核算导致定量更好的答案,也是一种更细微的支持,但主观的意见。

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