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Cross-Sentence Grammatical Error Correction

机译:跨句子语法纠错

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摘要

Automatic grammatical error correction (GEC) research has made remarkable progress in the past decade. However, all existing approaches to GEC correct errors by considering a single sentence alone and ignoring crucial cross-sentence context. Some errors can only be corrected reliably using cross-sentence context and models can also benefit from the additional contextual information in correcting other errors. In this paper, we address this serious limitation of existing approaches and improve strong neural encoder-decoder models by appropriately modeling wider contexts. We employ an auxiliary encoder that encodes previous sentences and incorporate the encoding in the decoder via attention and gating mechanisms. Our approach results in statistically significant improvements in overall GEC performance over strong baselines across multiple test sets. Analysis of our cross-sentence GEC model on a synthetic dataset shows high performance in verb tense corrections that require cross-sentence context.
机译:自动语法纠错(GEC)研究在过去十年中取得了显着进展。但是,通过考虑单独的单句并忽略关键的交叉句子上下文,所有现有的所有现有方法都可以正确纠正错误。只有使用串字上下文中的一些错误只能可靠地纠正,并且模型也可以从纠正其他错误时受益于附加上下文信息。在本文中,我们通过适当建模更广泛的环境来解决现有方法和改进强神经编码器 - 解码器模型的这种严重限制。我们使用辅助编码器,该编码器编码先前的句子,并通过注意和门控机制在解码器中包含编码。我们的方法会导致在多个测试集中的强基区域的整体GEC性能的统计上显着改进。对Synthetic DataSet上的跨句GEC模型的分析显示了在需要跨句子上下文的动词时态校正中的高性能。

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