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Grammatical Error Correction in Low-Resource Scenarios

About

Grammatical error correction in English is a long studied problem with many existing systems and datasets. However, there has been only a limited research on error correction of other languages. In this paper, we present a new dataset AKCES-GEC on grammatical error correction for Czech. We then make experiments on Czech, German and Russian and show that when utilizing synthetic parallel corpus, Transformer neural machine translation model can reach new state-of-the-art results on these datasets. AKCES-GEC is published under CC BY-NC-SA 4.0 license at https://hdl.handle.net/11234/1-3057 and the source code of the GEC model is available at https://github.com/ufal/low-resource-gec-wnut2019.

Jakub N\'aplava, Milan Straka• 2019

Related benchmarks

TaskDatasetResultRank
Grammatical Error CorrectionCoNLL 2014 (test)
F0.5 Score63.4
207
Grammatical Error CorrectionRULEC-GEC Russian (test)
F0.5 Score50.2
14
Grammatical Error CorrectionW&I+L (dev)
F0.553.3
9
Grammatical Error CorrectionW&I+L (test)
F0.569
8
Grammar Error CorrectionFalko-Merlin German (test)
Precision (P)78.21
6
Grammatical Error CorrectionAKCES-GEC Czech (test)
Precision84.21
6
Grammatical Error CorrectionAKCES-GEC Czech Foreigners - Slavic (test)
Precision84.34
1
Grammatical Error CorrectionAKCES-GEC Czech Foreigners - Other (test)
Precision81.03
1
Grammatical Error CorrectionAKCES-GEC Czech Romani (test)
Precision86.61
1
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