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SRQA: Synthetic Reader for Factoid Question Answering

机译:SRQA:Factoid问题解答的合成阅读器

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摘要

The question answering system can answer questions from various fields and forms with deep neural networks, but it still lacks effective ways when facing multiple evidences. We introduce a new model called SRQA, which means Synthetic Reader for Factoid Question Answering. This model enhances the question answering system in the multi-document scenario from three aspects: model structure, optimization goal, and training method, corresponding to Multilayer Attention (MA), Cross Evidence (CE), and Adversarial Training (AT) respectively. First, we propose a multilayer attention network to obtain a better representation of the evidences. The multilayer attention mechanism conducts interaction between the question and the passage within each layer, making the token representation of evidences in each layer takes the requirement of the question into account. Second, we design a cross evidence strategy to choose the answer span within more evidences. We improve the optimization goal, considering all the answers' locations in multiple evidences as training targets, which leads the model to reason among multiple evidences. Third, adversarial training is employed to high-level variables besides the word embedding in our model. A new normalization method is also proposed for adversarial perturbations so that we can jointly add perturbations to several target variables. As an effective regularization method, adversarial training enhances the model's ability to process noisy data. Combining these three strategies, we enhance the contextual representation and locating ability of our model, which could synthetically extract the answer span from several evidences. We perform SRQA on the WebQA dataset, and experiments show that our model outperforms the state-of-the-art models (the best fuzzy score of our model is up to 78.56%, with an improvement of about 2%). (c) 2019 Published by Elsevier B.V.
机译:问答系统可以使用深度神经网络来回答来自各个领域和形式的问题,但是当面对多个证据时,它仍然缺乏有效的方法。我们引入了一种称为SRQA的新模型,该模型意味着Factoid问题回答的合成阅读器。该模型从模型结构,优化目标和训练方法三个方面增强了多文档场景中的答疑系统,分别对应于多层注意(MA),交叉证据(CE)和对抗训练(AT)。首先,我们提出了一个多层注意力网络,以获得更好的证据表示。多层注意机制在问题和每一层中的段落之间进行交互,使得每一层中证据的令牌表示都考虑到了问题的要求。其次,我们设计了交叉证据策略,以在更多证据中选择答案范围。我们考虑到多个证据中所有答案的位置作为训练目标,从而提高了优化目标,从而使模型在多个证据之间进行推理。第三,除了在模型中嵌入单词以外,还对高级变量进行对抗训练。还提出了一种新的对抗性扰动的归一化方法,以便我们可以将扰动共同添加到多个目标变量。作为一种有效的正则化方法,对抗训练可增强模型处理噪声数据的能力。结合这三种策略,我们可以增强模型的上下文表示和定位能力,从而可以从多个证据中综合提取答案范围。我们对WebQA数据集执行SRQA,实验表明我们的模型优于最新模型(模型的最佳模糊得分高达78.56%,提高了约2%)。 (c)2019由Elsevier B.V.发布

著录项

  • 来源
    《Knowledge-Based Systems》 |2020年第6期|105415.1-105415.10|共10页
  • 作者

  • 作者单位

    Chinese Acad Sci Inst Elect Key Lab Network Informat Syst Technol NIST Beijing Peoples R China|Univ Chinese Acad Sci Beijing Peoples R China|City Univ Hong Kong Hong Kong Peoples R China;

    Chinese Acad Sci Inst Elect Key Lab Network Informat Syst Technol NIST Beijing Peoples R China|Univ Chinese Acad Sci Beijing Peoples R China;

    Chinese Acad Sci Inst Elect Key Lab Network Informat Syst Technol NIST Beijing Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Question answering; Multilayer attention; Cross evidence; Adversarial training;

    机译:问题回答;多层关注;交叉证据;对抗训练;

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