开放的问题回答在策划和提取的知识库

Anthony Fader, Luke Zettlemoyer, Oren Etzioni
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引用次数: 397

摘要

我们考虑了大规模知识库(KBs)上的开放域问答(Open QA)问题。现有的方法要么使用像Freebase这样手动管理的KBs,要么使用从非结构化文本中自动提取的KBs。在本文中,我们提出了OQA,这是第一种利用策划和提取KBs的方法。一个关键的技术挑战是设计对自然语言问题和大量知识库的高度可变性都具有鲁棒性的系统。OQA通过将完全开放的QA问题分解为更小的子问题(包括问题释义和查询重新表述)来实现鲁棒性。OQA通过从未标记的问题语料库和多个知识库中挖掘数百万条规则来解决这些子问题。然后,OQA通过使用潜在变量结构化感知器算法对问答对进行判别训练来学习整合这些规则。我们在三个基准问题集上评估了OQA,并证明它的精确度和召回率是最先进的Open QA系统的两倍。
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Open question answering over curated and extracted knowledge bases
We consider the problem of open-domain question answering (Open QA) over massive knowledge bases (KBs). Existing approaches use either manually curated KBs like Freebase or KBs automatically extracted from unstructured text. In this paper, we present OQA, the first approach to leverage both curated and extracted KBs. A key technical challenge is designing systems that are robust to the high variability in both natural language questions and massive KBs. OQA achieves robustness by decomposing the full Open QA problem into smaller sub-problems including question paraphrasing and query reformulation. OQA solves these sub-problems by mining millions of rules from an unlabeled question corpus and across multiple KBs. OQA then learns to integrate these rules by performing discriminative training on question-answer pairs using a latent-variable structured perceptron algorithm. We evaluate OQA on three benchmark question sets and demonstrate that it achieves up to twice the precision and recall of a state-of-the-art Open QA system.
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