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Improved Representation Learning for Question Answer Matching

机译:改进的表示学习,用于问题答案匹配

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Passage-level question answer matching is a challenging task since it requires effective representations that capture the complex semantic relations between questions and answers. In this work, we propose a series of deep learning models to address passage answer selection. To match passage answers to questions accommodating their complex semantic relations, unlike most previous work that utilizes a single deep learning structure, we develop hybrid models that process the text using both convolutional and recurrent neural networks, combining the merits on extracting linguistic information from both structures. Additionally, we also develop a simple but effective attention mechanism for the purpose of constructing better answer representations according to the input question, which is imperative for better modeling long answer sequences. The results on two public benchmark datasets, InsuranceQA and TREC-QA, show that our proposed models outperform a variety of strong baselines.
机译:段落级问题答案匹配是一项具有挑战性的任务,因为它需要有效的表示形式,以捕获问题和答案之间的复杂语义关系。在这项工作中,我们提出了一系列深度学习模型来解决段落答案的选择。为了与适应复杂语义关系的问题的段落答案相匹配,与以往大多数利用单一深度学习结构的工作不同,我们开发了混合模型,使用卷积神经网络和递归神经网络来处理文本,结合了从两种结构中提取语言信息的优点。此外,我们还开发了一种简单而有效的注意力机制,目的是根据输入的问题构建更好的答案表示形式,这对于更好地对长答案序列进行建模是必不可少的。两个公共基准数据集,InsuranceQA和TREC-QA的结果表明,我们提出的模型优于各种强大的基准。

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