2022
DOI: 10.48550/arxiv.2205.08274
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Tackling Math Word Problems with Fine-to-Coarse Abstracting and Reasoning

Abstract: Math Word Problems (MWP) is an important task that requires the ability of understanding and reasoning over mathematical text. Existing approaches mostly formalize it as a generation task by adopting Seq2Seq or Seq2Tree models to encode an input math problem in natural language as a global representation and generate the output mathematical expression. Such approaches only learn shallow heuristics and fail to capture fine-grained variations in inputs. In this paper, we propose to model a math word problem in a… Show more

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