增强型问答系统的句内句间注意模型

Yunyi Liu, Beixi Hao
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引用次数: 0

摘要

面向任务的问答对话系统是口语会话系统的一个重要分支,它首先理解用户的查询请求,并要求模型在考虑查询信息的上下文中寻找答案。以前的工作在没有考虑交互的情况下对语义和句法信息进行建模。在本文中,我们提出了一个句内句间注意框架,该框架配备了自注意机制,使模型能够更多地关注上下文的一小部分,增强了模型提取交互信息的能力。我们的实验基于斯坦福问答数据集(SQuAD),实验结果表明我们的模型达到了68.5 EM和77.7 F1分数,验证了我们的模型在数据集上的改进效果。
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Intra-and-inter Sentence Attention Model for Enhanced Question Answering System
Task-oriented question answering dialogue systems have been an important branch of conversational systems for oral language, where they first understand the query requested by users, and the models are demanded to seek for answers within the context considering the query information. Previous work models the semantic and syntactic information without taking the interaction into consideration. In this paper, we propose an intra-and-inter sentence attention framework, equipped with self-attention mechanism, which enables the model to focus more on a small part of the context and enhances the model capability of extracting the interactive information. Our experiments are based on the Stanford Question Answering Dataset (SQuAD) and the experimental result shows that our model achieves 68.5 EM and 77.7 F1 score, which verifies how the proposed model improves on the dataset.
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