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首页> 外文期刊>Computational intelligence and neuroscience >Taking a Closed-Book Examination: Decoupling KB-Based Inference by Virtual Hypothesis for Answering Real-World Questions
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Taking a Closed-Book Examination: Decoupling KB-Based Inference by Virtual Hypothesis for Answering Real-World Questions

机译:采取封闭簿检查:虚拟假设解耦基于KB的推断,以回答现实世界问题

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Complex question answering in real world is a comprehensive and challenging task due to its demand for deeper question understanding and deeper inference. Information retrieval is a common solution and easy to implement, but it cannot answer questions which need long-distance dependencies across multiple documents. Knowledge base (KB) organizes information as a graph, and KB-based inference can employ logic formulas or knowledge embeddings to capture such long-distance semantic associations. However, KB-based inference has not been applied to real-world question answering well, because there are gaps among natural language, complex semantic structure, and appropriate hypothesis for inference. We propose decoupling KB-based inference by transforming a question into a high-level triplet in the KB, which makes it possible to apply KB-based inference methods to answer complex questions. In addition, we create a specialized question answering dataset only for inference, and our method is proved to be effective by conducting experiments on both AI2 Science Questions dataset and ours.
机译:由于对更深入的问题理解和更深入推断的需求,在现实世界中回答的复杂问题是一个全面而具有挑战性的任务。信息检索是一个常见的解决方案,易于实现,但它无法应答多个文档需要长距离依赖性的问题。知识库(KB)将信息作为图形组织为图形,基于KB的推断可以使用逻辑公式或知识嵌入来捕获这种远程语义关联。然而,基于KB的推论尚未应用于真实世界的问题回答良好,因为自然语言,复杂语义结构之间存在间隙,以及适当的假设。我们通过将问题转换为KB中的高级三联网来提出基于KB的推断,这使得可以应用基于KB的推断方法来回答复杂的问题。此外,我们创建了一个专门的问题,仅供推理的数据集,我们的方法被证明是通过对AI2科学问题数据集和我们的实验进行实验。

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