用神经符号知识库回答自然语言问题

Haitian Sun, Pat Verga, William W. Cohen
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摘要

基于一阶逻辑的符号推理系统具有强大的计算能力,而前馈神经网络具有高效的计算能力,因此除非P=NP,否则神经网络通常无法模拟符号逻辑。因此,弥合神经方法和符号方法之间的差距需要达到一种微妙的平衡:一个人需要结合足够的符号推理来完成一项任务,但又不能过多地导致计算困难。在本章中,我们首先给出了使这一说法准确的结果,然后使用这些形式化的结果来告知基于集的数据流查询语言的神经符号知识推理系统的选择。然后,我们展示了该神经符号推理器的许多变体的实验结果,并表明该神经符号推理器可以紧密集成到现代神经语言模型中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Answering Natural-Language Questions with Neuro-Symbolic Knowledge Bases
Symbolic reasoning systems based on first-order logics are computationally powerful, and feedforward neural networks are computationally efficient, so unless P=NP, neural networks cannot, in general, emulate symbolic logics. Hence bridging the gap between neural and symbolic methods requires achieving a delicate balance: one needs to incorporate just enough of symbolic reasoning to be useful for a task, but not so much as to cause computational intractability. In this chapter we first present results that make this claim precise, and then use these formal results to inform the choice of a neuro-symbolic knowledge-based reasoning system, based on a set-based dataflow query language. We then present experimental results with a number of variants of this neuro-symbolic reasoner, and also show that this neuro-symbolic reasoner can be closely integrated into modern neural language models.
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