Chaining Simultaneous Thoughts for Numerical Reasoning

Zhihong Shao, Fei Huang, Minlie Huang
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引用次数: 5

Abstract

Given that rich information is hidden behind ubiquitous numbers in text, numerical reasoning over text should be an essential skill of AI systems. To derive precise equations to solve numerical reasoning problems, previous work focused on modeling the structures of equations, and has proposed various structured decoders. Though structure modeling proves to be effective, these structured decoders construct a single equation in a pre-defined autoregressive order, potentially placing an unnecessary restriction on how a model should grasp the reasoning process. Intuitively, humans may have numerous pieces of thoughts popping up in no pre-defined order; thoughts are not limited to the problem at hand, and can even be concerned with other related problems. By comparing diverse thoughts and chaining relevant pieces, humans are less prone to errors. In this paper, we take this inspiration and propose CANTOR, a numerical reasoner that models reasoning steps using a directed acyclic graph where we produce diverse reasoning steps simultaneously without pre-defined decoding dependencies, and compare and chain relevant ones to reach a solution. Extensive experiments demonstrated the effectiveness of CANTOR under both fully-supervised and weakly-supervised settings.
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连接数字推理的同步思想
考虑到文本中无处不在的数字背后隐藏着丰富的信息,对文本进行数值推理应该是人工智能系统的一项基本技能。为了推导出精确的方程来解决数值推理问题,以前的工作主要集中在方程结构的建模上,并提出了各种结构化解码器。虽然结构建模被证明是有效的,但这些结构化解码器以预定义的自回归顺序构建单个方程,可能会对模型应该如何掌握推理过程施加不必要的限制。从直觉上讲,人类可能会有无数的想法以没有预先定义的顺序出现;思想不局限于手头的问题,甚至可以关注其他相关的问题。通过比较不同的想法和链接相关的片段,人类就不太容易出错。在本文中,我们受此启发并提出了CANTOR,这是一个数值推理器,它使用有向无环图来建模推理步骤,我们同时产生不同的推理步骤,没有预先定义的解码依赖,并比较和链接相关的步骤以达到解决方案。大量的实验证明了CANTOR在完全监督和弱监督设置下的有效性。
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