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MWPToolkit: An Open-Source Framework for Deep Learning-Based Math Word Problem Solvers

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arxiv 2109.00799 v2 pith:A6BMTPB5 submitted 2021-09-02 cs.CL

MWPToolkit: An Open-Source Framework for Deep Learning-Based Math Word Problem Solvers

classification cs.CL
keywords mwptoolkitsolversmethodsbenchmarksdatasetsdeepexistingframework
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Developing automatic Math Word Problem (MWP) solvers has been an interest of NLP researchers since the 1960s. Over the last few years, there are a growing number of datasets and deep learning-based methods proposed for effectively solving MWPs. However, most existing methods are benchmarked soly on one or two datasets, varying in different configurations, which leads to a lack of unified, standardized, fair, and comprehensive comparison between methods. This paper presents MWPToolkit, the first open-source framework for solving MWPs. In MWPToolkit, we decompose the procedure of existing MWP solvers into multiple core components and decouple their models into highly reusable modules. We also provide a hyper-parameter search function to boost the performance. In total, we implement and compare 17 MWP solvers on 4 widely-used single equation generation benchmarks and 2 multiple equations generation benchmarks. These features enable our MWPToolkit to be suitable for researchers to reproduce advanced baseline models and develop new MWP solvers quickly. Code and documents are available at https://github.com/LYH-YF/MWPToolkit.

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