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Question Answering on Knowledge Bases and Text using Universal Schema and Memory Networks

机译:使用通用架构和内存网络的知识库和文本问答

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Existing question answering methods infer answers either from a knowledge base or from raw text. While knowledge base (KB) methods are good at answering compositional questions, their performance is often affected by the incompleteness of the KB. Au contraire, web text contains millions of facts that are absent in the KB, however in an unstructured form. Universal schema can support reasoning on the union of both structured KBs and unstructured text by aligning them in a common embedded space. In this paper we extend universal schema to natural language question answering, employing memory networks to attend to the large body of facts in the combination of text and KB. Our models can be trained in an end-to-end fashion on question-answer pairs. Evaluation results on Spades fill-in-the-blank question answering dataset show that exploiting universal schema for question answering is better than using either a KB or text alone. This model also outperforms the current state-of-the-art by 8.5 F_1 points.
机译:现有的问题解答方法可以从知识库或原始文本中推断出答案。尽管知识库(KB)方法擅长回答组成问题,但其性能通常会受到KB不完整的影响。相反,Web文本包含KB中不存在的数百万个事实,但是形式不规则。通用模式可以通过在公共嵌入式空间中对齐结构化知识库和非结构化文本来支持推理。在本文中,我们将通用模式扩展到自然语言问答,利用存储网络来结合文本和KB来处理大量事实。我们的模型可以在问题-答案对上以端到端的方式进行训练。对Spades的空白问答数据集进行评估的结果表明,利用通用模式进行问答比单独使用KB或文本要好。该模型还比当前的最新技术提高了8.5 F_1点。

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