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Seq2Edits: Sequence Transduction Using Span-level Edit Operations

机译:SEQ2EDITS:使用跨度级编辑操作进行序列转换

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We propose Seq2Edits, an open-vocabulary approach to sequence editing for natural language processing (NLP) tasks with a high degree of overlap between input and output texts. In this approach, each sequence-to-sequence transduction is represented as a sequence of edit operations, where each operation either replaces an entire source span with target tokens or keeps it unchanged. We evaluate our method on five NLP tasks (text normalization, sentence fusion, sentence splitting & rephrasing, text simplification, and grammatical error correction) and report competitive results across the board. For grammatical error correction, our method speeds up inference by up to 5.2x compared to full sequence models because inference time depends on the number of edits rather than the number of target tokens. For text normalization, sentence fusion, and grammatical error correction, our approach improves explainability by associating each edit operation with a human-readable tag.
机译:我们提出SEQ2EDITS,一种开放词汇方法来序列编辑,用于在输入和输出文本之间具有高度重叠的自然语言处理(NLP)任务。在这种方法中,每个序列到序列转换被表示为编辑操作的序列,其中每个操作要么用目标令牌替换整个源跨度,或者保持不变。我们在五个NLP任务中评估我们的方法(文本标准化,句子融合,句子分裂和重新写入,文本简化和语法纠错),并在董事会上报告具有竞争力的结果。对于语法纠错,与完整序列模型相比,我们的方法将推断高达5.2倍,因为推理时间取决于编辑的数量而不是目标令牌的数量。对于文本归一化,句子融合和语法纠错,我们的方法通过将每个编辑操作与人类可读标签相关联来提高可解释性。

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