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A Domain-Specific Non-Factoid Question Answering System based on Terminology Mining and Siamese Neural Network

机译:基于术语挖掘和暹罗神经网络的域特定的非因子问题应答系统

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摘要

The non-factoid question answering system (QAS) responds to an input question by fetching an answer from a question answering (QA) database. The existing non-factoid QASs still cannot well adapt to specific professional domains due to the lack of domain knowledge. Aiming at this problem, this paper proposes a domain-specific non-factoid QAS by combining information retrieval technique and deep neural network. First, it extracts professional terms from the domain-specific documents. The professional terms can be used as an important source of domain knowledge. Second, it trains a deep Siamese neural network for semantically matching the questions. Finally, it queries and ranks the candidate answers based on the professional terms and the deep Siamese neural network. We conducted experiments based on two real domain-specific QA databases, and the experiment results have demonstrated the effectiveness of the proposed QAS.
机译:非因子问题应答系统(QAS)通过从问题应答(QA)数据库中获取答案来响应输入问题。 由于缺乏领域知识,现有的非因子QASS仍然无法适应特定的专业领域。 针对这个问题,本文通过组合信息检索技术和深神经网络来提出域特定的非因子QA。 首先,它从域的文档中提取专业人员。 专业人员可以用作域知识的重要来源。 其次,它列举了一个深度暹罗神经网络,用于语义匹配问题。 最后,根据专业术语和深度暹罗神经网络对候选答案进行疑问。 我们进行了基于两个真实域特定的QA数据库的实验,实验结果表明了提出的QAS的有效性。

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