Proceedings of the Annual Conference of JSAI
Online ISSN : 2758-7347
32nd (2018)
Session ID : 4Pin1-23
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Multi-source neural grammatical error correction
*Cao GUOLINHiroya TAKAMURAManabu OKUMURA
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Abstract

This is the first attempt to use a multi-source encoder-decoder model for the grammatical error correction task (GEC). In addition to the possibly erroneous sentence written in a second language, our model uses the sentence written in the mother tongue of the learner. With our model, we achieved up to 1.13 GLEU score increases than the single source baseline model.

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© 2018 The Japanese Society for Artificial Intelligence
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