Investigating the role of Named Entity Recognition in Question Answering Models

Vasuki Nadapana, Hima Bindu Kommanti
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Abstract

Machine Reading Comprehension (MRC) is a challenging Question - Answering (QA) task that helps the user in providing the answer to the given question. There is a lot of progress in this area due to the availability of large datasets and large pre-trained language models based on transformer architecture (BERT). Named Entity Recognition (NER) was used for neural QA systems to improve performance. However, whether NER plays a vital role in a QA system built using contextual embeddings obtained through BERT variants is not explored. To fill this gap, we investigate whether NER is helpful in improving the performance of QA systems built using BERT variants. We experimented with Squad 2.0 using SpanBERT. The Squad 2.0 dataset has both answerable and unanswerable questions. The proposed model finds the answer span if the question is answerable and, provides justification for the unanswerable questions. We perform question analysis to find the expected answer tag and then use that information to find the relevant parts of the passage in order to retrieve the answer span.
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探讨命名实体识别在问答模型中的作用
机器阅读理解(MRC)是一项具有挑战性的问答(QA)任务,它帮助用户提供给定问题的答案。由于基于转换架构(BERT)的大型数据集和大型预训练语言模型的可用性,这一领域取得了很大进展。命名实体识别(NER)用于神经QA系统以提高性能。然而,没有探讨NER是否在使用通过BERT变体获得的上下文嵌入构建的QA系统中发挥重要作用。为了填补这一空白,我们研究了NER是否有助于提高使用BERT变体构建的QA系统的性能。我们用SpanBERT做了Squad 2.0的实验。Squad 2.0数据集既有可回答的问题,也有无法回答的问题。如果问题是可回答的,该模型会找到答案范围,并为无法回答的问题提供理由。我们执行问题分析以查找期望的答案标签,然后使用该信息查找文章的相关部分,以便检索答案跨度。
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