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PASS: Perturb-and-Select Summarizer for Product Reviews

机译:通行证:Perturb-and-Select Summarizer,用于产品评论

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摘要

The product reviews summarization task aims to automatically produce a short summary for a set of reviews of a given product. Such summaries are expected to aggregate a range of different opinions in a concise, coherent and informative manner. This challenging task gives rise to two shortcomings in existing work. First, summarizers tend to favor generic content that appears in reviews for many different products, resulting in template-like, less informative summaries. Second, as reviewers often disagree on the pros and cons of a given product, summarizers sometimes yield inconsistent, self-contradicting summaries. We propose the PASS system (Perturb-and-Select Summarizer) that employs a large pre-trained Transformer-based model (T5 in our case), which follows a few-shot fine-tuning scheme. A key component of the PASS system relies on applying systematic perturbations to the model's input during inference, which allows it to generate multiple different summaries per product. We develop a method for ranking these summaries according to desired criteria, coherence in our case, enabling our system to almost entirely avoid the problem of self-contradiction. We compare our system against strong baselines on publicly available datasets, and show that it produces summaries which are more informative, diverse and coherent.
机译:该产品审查摘要任务旨在自动生产一套给定产品的一套评论的简短摘要。这些摘要预计将以简洁,连贯和信息的方式汇总一系列不同的意见。这项挑战性的任务产生了现有工作中的两个缺点。首先,摘要倾向于赞成出现在众多不同产品中的评论中的通用内容,导致模板,较少的信息摘要。其次,由于审查人员经常不同意给定产品的利弊,总结者有时会产生不一致,自相矛盾的摘要。我们提出了使用大型预训练的变压器的型号(我们的案例中的Perturb-and-Select Sumparizer),其遵循几次微调方案。 PASS系统的一个关键组件依赖于在推理期间对模型的输入应用于模型的输入,这允许其生成每个产品的多个不同摘要。我们开发了一种根据所需标准,在我们的情况下的一致性,使我们的系统几乎完全避免自我矛盾问题的方法。我们将系统与公开的数据集上的强大基线进行比较,并表明它产生了更具信息丰富,多样化和连贯的摘要。

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