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Neural Language Correction with Character-Based Attention

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arxiv 1603.09727 v1 pith:JCGOT3WS submitted 2016-03-31 cs.CL cs.AI

Neural Language Correction with Character-Based Attention

classification cs.CL cs.AI
keywords languageneuralcorrectionerrorsnetworkapproachattentionimprove
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Natural language correction has the potential to help language learners improve their writing skills. While approaches with separate classifiers for different error types have high precision, they do not flexibly handle errors such as redundancy or non-idiomatic phrasing. On the other hand, word and phrase-based machine translation methods are not designed to cope with orthographic errors, and have recently been outpaced by neural models. Motivated by these issues, we present a neural network-based approach to language correction. The core component of our method is an encoder-decoder recurrent neural network with an attention mechanism. By operating at the character level, the network avoids the problem of out-of-vocabulary words. We illustrate the flexibility of our approach on dataset of noisy, user-generated text collected from an English learner forum. When combined with a language model, our method achieves a state-of-the-art $F_{0.5}$-score on the CoNLL 2014 Shared Task. We further demonstrate that training the network on additional data with synthesized errors can improve performance.

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