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ReasoNet: Learning to Stop Reading in Machine Comprehension

机译:理性:学习在机器理解中停止阅读

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摘要

Teaching a computer to read and answer general questions pertaining to a document is a challenging yet unsolved problem. In this paper, we describe a novel neural network architecture called the Reasoning Network (ReasoNet) for machine comprehension tasks. ReasoNets make use of multiple turns to effectively exploit and then reason over the relation among queries, documents, and answers. Different from previous approaches using a fixed number of turns during inference, ReasoNets introduce a termination state to relax this constraint on the reasoning depth. With the use of reinforcement learning, ReasoNets can dynamically determine whether to continue the comprehension process after digesting intermediate results, or to terminate reading when it concludes that existing information is adequate to produce an answer. ReasoNets achieve superior performance in machine comprehension datasets, including unstructured CNN and Daily Mail datasets, the Stanford SQuAD dataset, and a structured Graph Reachability dataset.
机译:教授计算机阅读和回答与文档有关的一般问题是一个具有挑战性的尚未解决的问题。在本文中,我们描述了一种称为机械理解任务的推理网络(理性)的新型神经网络架构。通道将使用多个转弯以有效利用,然后在查询,文档和答案之间的关系中的原因。不同于在推理期间使用固定匝数的先前接近的方法,通道将引入终止状态以放宽在推理深度上的这种约束。随着使用加强学习,通道将动态地确定是否在消化中间结果后继续理解过程,或者在结论现有信息足以产生答案时终止阅读。 Learingets在机器理解数据集中实现了卓越的性能,包括非结构化的CNN和每日邮件数据集,Stanford Squad数据集和结构化图形到达性数据集。

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