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Text2Math: End-to-end Parsing Text into Math Expressions

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 Added by Yanyan Zou
 Publication date 2019
and research's language is English




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We propose Text2Math, a model for semantically parsing text into math expressions. The model can be used to solve different math related problems including arithmetic word problems and equation parsing problems. Unlike previous approaches, we tackle the problem from an end-to-end structured prediction perspective where our algorithm aims to predict the complete math expression at once as a tree structure, where minimal manual efforts are involved in the process. Empirical results on benchmark datasets demonstrate the efficacy of our approach.



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277 - Peng Shi , Tao Yu , Patrick Ng 2021
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