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Quantity Tagger: A Latent-Variable Sequence Labeling Approach to Solving Addition-Subtraction Word Problems

机译:数量标记符:一种解决加减单词问题的潜在变量序列标记方法

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An arithmetic word problem typically includes a textual description containing several constant quantities. The key to solving the problem is to reveal the underlying mathematical relations (such as addition and subtraction) among quantities, and then generate equations to find solutions. This work presents a novel approach, Quantity Tagger, that automatically discovers such hidden relations by tagging each quantity with a sign corresponding to one type of mathematical operation. For each quantity, we assume there exists a latent, variable-sized quantity span surrounding the quantity token in the text, which conveys information useful for determining its sign. Empirical results show that our method achieves 5 and 8 points of accuracy gains on two datasets respectively, compared to prior approaches.
机译:算术单词问题通常包括包含几个常数的文本描述。解决问题的关键是揭示数量之间潜在的数学关系(例如加法和减法),然后生成方程式以找到解决方案。这项工作提出了一种新颖的方法,数量标记符,该方法通过用与一种数学运算类型相对应的符号标记每个数量来自动发现这种隐藏的关系。对于每个数量,我们假设在文本中围绕数量标记存在一个潜在的,可变大小的数量跨度,该跨度传达了可用于确定其符号的信息。实证结果表明,与现有方法相比,我们的方法在两个数据集上分别获得了5点和8点的准确度增益。

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