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Coarse-To-Careful: Seeking Semantic-Related Knowledge for Open-Domain Commonsense Question Answering

机译:粗心小心:寻求与开放式致辞问题的语义相关知识回答

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It is prevalent to utilize external knowledge to help machine answer questions that need background commonsense, which faces a problem that unlimited knowledge will transmit noisy and misleading information. Towards the issue of introducing related knowledge, we propose a semantic-driven knowledge-aware QA framework, which controls the knowledge injection in a coarse-to-careful fashion. We devise a tailoring strategy to filter extracted knowledge under monitoring of the coarse semantic of question on the knowledge extraction stage. And we develop a semantic-aware knowledge fetching module that engages structural knowledge information and fuses proper knowledge according to the careful semantic of questions in a hierarchical way. Experiments demonstrate that the proposed approach promotes the performance on the CommonsenseQA dataset comparing with strong baselines.
机译:利用外部知识来帮助机器回答需要背景致辞的问题是普遍的,这面临着无限制知识将传递嘈杂和误导信息的问题。 为了引入相关知识的问题,我们提出了一种语义驱动的知识感知的QA框架,它以粗糙的方式控制知识注射。 我们设计了剪裁策略,以在知识提取阶段的粗略语义监测下过滤提取的知识。 我们开发了一个语义感知知识获取模块,其涉及结构知识信息,并以分层方式仔细的语义问题融合了正确的知识。 实验表明,拟议的方法促进了与强基线相比的致命性QA数据集的表现。

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