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CopyNext: Explicit Span Copying and Alignment in Sequence to Sequence Models

机译:CopyNext:序列序列模型的显式跨度复制和对齐

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Copy mechanisms are employed in sequence to sequence models (seq2seq) to generate reproductions of words from the input to the output. These frameworks, operating at the lexical type level, fail to provide an explicit alignment that records where each token was copied from. Further, they require contiguous token sequences from the input (spans) to be copied individually. We present a model with an explicit token-level copy operation and extend it to copying entire spans. Our model provides hard alignments between spans in the input and output, allowing for nontraditional applications of seq2seq, like information extraction. We demonstrate the approach on Nested Named Entity Recognition, achieving near state-of-the-art accuracy with an order of magnitude increase in decoding speed.1
机译:复制机制依次采用序列模型(SEQ2Seq)以生成从输入到输出的单词的再现。这些框架,在词汇类型级别操作,无法提供显式对齐,其记录每个令牌复制的位置。此外,它们需要单独复制的输入(跨度)的连续令牌序列。我们提出了一个具有明确令牌级复制操作的模型,并将其扩展为复制整个跨度。我们的模型在输入和输出中的跨度之间提供了硬对齐,允许SEQ2Seq的非传统应用,如信息提取。我们展示了嵌套命名实体识别的方法,实现了近最先进的准确性,并以解码速度的增加顺序增加。

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