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Point to the Expression: Solving Algebraic Word Problems using the Expression-Pointer Transformer Model

机译:指向表达式:使用表达式指针变压器模型解决代数字问题

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Solving algebraic word problems has recently emerged as an important natural language processing task. To solve algebraic word problems, recent studies suggested neural models that generate solution equations by using 'Op (operator/operand)' tokens as a unit of input/output. However, such a neural model suffered two issues: expression fragmentation and operand-context separation. To address each of these two issues, we propose a pure neural model, Expression-Pointer Transformer (EPT), which uses (1) 'Expression' token and (2) operand-context pointers when generating solution equations. The performance of the EPT model is tested on three datasets: ALG514, DRAW-1K, and MAWPS. Compared to the state-of-the-art (SoTA) models, the EPT model achieved a comparable performance accuracy in each of the three datasets; 81.3% on ALG514, 59.5% on DRAW-IK, and 84.5% on MAWPS. The contribution of this paper is two-fold; (1) We propose a pure neural model, EPT, which can address the expression fragmentation and the operand-context separation. (2) The fully automatic EPT model, which does not use hand-crafted features, yields comparable performance to existing models using hand-crafted features, and achieves better performance than existing pure neural models by at most 40%.
机译:解决代数词问题最近被出现为重要的自然语言处理任务。为了解决代数词问题,最近的研究建议通过使用“OP(运算符/操作数)”令牌作为输入/输出单位来生成解决方程的神经模型。然而,这种神经模型遭受了两个问题:表达碎片和操作数上下文分离。为了解决这两个问题中的每一个,我们提出了一个纯粹的神经模型,表达式指针变换器(EPT),它在生成解决方案时使用(1)'表达式令牌和(2)操作数上下文指针。 EPT模型的性能在三个数据集中进行测试:ALG514,Draw-1K和MAWPS。与最先进的(SOTA)模型相比,EPT模型在三个数据集中的每一个中实现了相当的性能精度; 81.3%关于ALG514,绘制IK的59.5%,MAWPS的84.5%。本文的贡献是双重的; (1)我们提出了一种纯粹的神经模型,EPT,其可以解决表达碎片和操作数语境分离。 (2)完全自动EPT模型,不使用手工制作功能,使用手工制作功能对现有型号产生相当的性能,并且比现有的纯神经模型最多40%实现更好的性能。

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