Sentence-Level Grammatical Error Identification as Sequence-to-Sequence Correction

April 16, 2016 ยท Declared Dead ยท ๐Ÿ› BEA@NAACL-HLT

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Authors Allen Schmaltz, Yoon Kim, Alexander M. Rush, Stuart M. Shieber arXiv ID 1604.04677 Category cs.CL: Computation & Language Citations 44 Venue BEA@NAACL-HLT Last Checked 4 months ago
Abstract
We demonstrate that an attention-based encoder-decoder model can be used for sentence-level grammatical error identification for the Automated Evaluation of Scientific Writing (AESW) Shared Task 2016. The attention-based encoder-decoder models can be used for the generation of corrections, in addition to error identification, which is of interest for certain end-user applications. We show that a character-based encoder-decoder model is particularly effective, outperforming other results on the AESW Shared Task on its own, and showing gains over a word-based counterpart. Our final model--a combination of three character-based encoder-decoder models, one word-based encoder-decoder model, and a sentence-level CNN--is the highest performing system on the AESW 2016 binary prediction Shared Task.
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