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Open-Domain Why-Question Answering with Adversarial Learning to Encode Answer Texts

机译:开放域为什么用反对派学习回答编码答案文本的回答

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In this paper, we propose a method for why-question answering (why-QA) that uses an adversarial learning framework. Existing why-QA methods retrieve answer passages that usually consist of several sentences. These multi-sentence passages contain not only the reason sought by a why-question and its connection to the why-question, but also redundant and/or unrelated parts. We use our proposed Adversarial networks for Generating compact-answer Representation (AGR) to generate from a passage a vector representation of the non-redundant reason sought by a why-question and exploit the representation for judging whether the passage actually answers the why-question. Through a series of experiments using Japanese why-QA datasets. we show that these representations improve the performance of our why-QA neural model as well as that of a BERT-based why-QA model. We show that they also improve a state-of-the-art distantly supervised open-domain QA (DS-QA) method on publicly available English datasets, even though the target task is not a why-QA.
机译:在本文中,我们提出了一种方法,用于为什么答案应答(为什么 - QA),它使用对抗性学习框架。现有的为什么-qa方法检索通常由几个句子组成的答案段。这些多句子段不仅包含一个为什么所寻求的原因及其与为什么疑问的原因,还包含冗余和/或不相关的部分。我们使用我们提出的对冲网络来生成紧凑答案表示(AGR)来生成从段落中产生的矢量表示,该段落表示为什么问题和利用表示来判断该段落是否实际回答为什么答案的原因。通过使用日语为什么的一系列实验。我们展示这些陈述提高了我们为什么-Cual-QA神经模型以及基于BERT的QA模型的表现。我们表明,即使目标任务不是Qo-QA,它们也表明他们还在公开的英语数据集上改进了最先进的远方监督开放式开放式QA(DS-QA)方法。

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