Analogical Math Word Problems Solving with Enhanced Problem-Solution Association

Zhenwen Liang, Jipeng Zhang, Xiangliang Zhang
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引用次数: 3

Abstract

Math word problem (MWP) solving is an important task in question answering which requires human-like reasoning ability. Analogical reasoning has long been used in mathematical education, as it enables students to apply common relational structures of mathematical situations to solve new problems. In this paper, we propose to build a novel MWP solver by leveraging analogical MWPs, which advance the solver’s generalization ability across different kinds of MWPs. The key idea, named analogy identification, is to associate the analogical MWP pairs in a latent space, i.e., encoding an MWP close to another analogical MWP, while leaving away from the non-analogical ones. Moreover, a solution discriminator is integrated into the MWP solver to enhance the association between an MWP and its true solution. The evaluation results verify that our proposed analogical learning strategy promotes the performance of MWP-BERT on Math23k over the state-of-the-art model Generate2Rank, with 5 times fewer parameters in the encoder. We also find that our model has a stronger generalization ability in solving difficult MWPs due to the analogical learning from easy MWPs.
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用增强的问题-解决方案关联解决类比数学单词问题
数学应用题求解是问答中的一项重要任务,需要具备类似人的推理能力。类比推理在数学教育中一直被使用,因为它使学生能够应用数学情境的常见关系结构来解决新问题。在本文中,我们提出利用类比MWP构建一个新的MWP求解器,这提高了求解器在不同类型MWP之间的泛化能力。其关键思想,称为类比识别,是在潜在空间中关联类比MWP对,即编码一个接近另一个类比MWP的MWP,而远离非类比MWP。此外,在MWP求解器中集成了解判别器,增强了MWP与其真解之间的关联。评估结果验证了我们提出的类比学习策略在Math23k上比最先进的模型Generate2Rank提高了MWP-BERT的性能,编码器中的参数减少了5倍。我们还发现,由于从简单的mwp中进行类比学习,我们的模型在解决困难的mwp时具有更强的泛化能力。
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