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Multiple Perspective Answer Reranking for Multi-passage Reading Comprehension

机译:多通道阅读理解重新透视答案重新恢复

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This study focuses on multi-passage Machine Reading Comprehension (MRC) task. Prior work has shown that retriever, reader pipeline model could improve overall performance. However, the pipeline model relies heavily on retriever component since inferior retrieved documents would significantly degrade the performance. In this study, we proposed a new multi-perspective answer reranking technique that considers all documents to verify the confidence of candidate answers; such nuanced technique can carefully distinguish candidate answers to improve performance. Specifically, we rearrange the order of traditional pipeline model and make a posterior answer reranking instead of prior passage reranking. In addition, new proposed pre-trained language model BERT is also introduced here. Experiments with Chinese multi-passage dataset DuReader show that our model achieves competitive performance.
机译:本研究重点是多通道机阅读理解(MRC)任务。事先工作表明,读者,读者管道模型可以提高整体性能。然而,管道模型严重依赖于检索器组件,因为下检索的文件会显着降低性能。在这项研究中,我们提出了一种新的多视角答案重新登记技术,旨在验证候选人答案的信心;这种细致的技术可以仔细区分候选答案来提高性能。具体而言,我们重新排列传统管道模型的顺序,并制作后答重新答案而不是先前通过重新登记。此外,此处还介绍了新的提出的预先接受的语言模型BERT。中国多段数据集DUREADER的实验表明,我们的模型实现了竞争性能。

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