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Multi-choice Relational Reasoning for Machine Reading Comprehension

机译:机器阅读理解的多项选择关系推理

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This paper presents our study of cloze-style reading comprehension by imitating human reading comprehension, which normally involves tactical comparing and reasoning over candidates while choosing the best answer. We propose a multi-choice relational reasoning (McR~2) model with an aim to enable relational reasoning on candidates based on fusion representations of document, query and candidates. For the fusion representations, we develop an efficient encoding architecture by integrating the schemes of bidirectional attention flow, self-attention and document-gated query reading. Then, comparing and inferring over candidates are executed by a novel relational reasoning network. We conduct extensive experiments on four datasets derived from two public corpora, Children's Book Test and Who DiD What, to verify the validity and advantages of our model. The results show that it outperforms all baseline models significantly on the four benchmark datasets. The effectiveness of its key components is also validated by an ablation study.
机译:本文提出了通过模仿人类阅读理解的渗透式阅读理解研究,这通常涉及在选择最佳答案的同时涉及战术比较和推理候选人。我们提出了一种多选择关系推理(MCR〜2)模型,其目的是基于文件,查询和候选人的融合表示来实现候选人的关系。对于融合表示,我们通过集成双向注意流,自我关注和文档门控查询读取的方案来开发一个有效的编码架构。然后,通过新颖的关系推理网络来执行比较和推断候选者。我们对来自两个公共集团的四个数据集进行了广泛的实验,儿童书籍测试以及谁做了什么,验证我们模型的有效性和优势。结果表明它在四个基准数据集中显着优于所有基线模型。通过消融研究还验证了其关键部件的有效性。

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