利用去噪抽象意义表示进行语法纠错

He Cao, Dongyan Zhao
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引用次数: 0

摘要

语法纠错(GEC)是将错误的句子纠正成语法正确、语义一致和连贯的句子。流行的GEC模型要么使用大规模的合成语料库,要么使用大量人为设计的规则。前者的训练成本很高,而后者则需要相当多的人类专业知识。近年来,语义表示框架AMR以其完备性和灵活性被广泛应用于许多自然语言任务中。一个不容忽视的问题是,语法错误句子的amr可能并不完全可靠。在本文中,我们提出了AMR- gec,这是一种将去噪的AMR作为附加知识的序列到序列模型。具体而言,我们设计了一个语义聚合的GEC模型,并探索了去噪方法,以提高amr的可靠性。在BEA-2019共享任务和CoNLL-2014共享任务上的实验表明,AMR-GEC的性能与一组具有大量合成数据的强基线相当。与使用合成数据的T5模型相比,AMR-GEC模型的训练时间缩短了32%,而推理时间相当。据我们所知,我们是第一个将AMR用于语法错误纠正的公司。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Denoised Abstract Meaning Representation for Grammatical Error Correction
Grammatical Error Correction (GEC) is the task of correcting errorful sentences into grammatically correct, semantically consistent, and coherent sentences. Popular GEC models either use large-scale synthetic corpora or use a large number of human-designed rules. The former is costly to train, while the latter requires quite a lot of human expertise. In recent years, AMR, a semantic representation framework, has been widely used by many natural language tasks due to its completeness and flexibility. A non-negligible concern is that AMRs of grammatically incorrect sentences may not be exactly reliable. In this paper, we propose the AMR-GEC, a seq-to-seq model that incorporates denoised AMR as additional knowledge. Specifically, We design a semantic aggregated GEC model and explore denoising methods to get AMRs more reliable. Experiments on the BEA-2019 shared task and the CoNLL-2014 shared task have shown that AMR-GEC performs comparably to a set of strong baselines with a large number of synthetic data. Compared with the T5 model with synthetic data, AMR-GEC can reduce the training time by 32\% while inference time is comparable. To the best of our knowledge, we are the first to incorporate AMR for grammatical error correction.
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