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Local String Transduction as Sequence Labeling

机译:本地字符串转换为序列标记

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We show that the general problem of string transduction can be reduced to the problem of sequence labeling. While character deletions and insertions are allowed in string transduction, they do not exist in sequence labeling. We show how to overcome this difference. Our approach can be used with any sequence labeling algorithm and it works best for problems in which string transduction imposes a strong notion of locality (no long range dependencies). We experiment with spelling correction for social media, OCR correction, and morphological inflection, and we see that it behaves better than seq2seq models and yields state-of-the-art results in several cases.
机译:我们表明,串转换的一般问题可以减少到序列标记的问题。虽然在字符串转换中允许字符删除和插入时,它们不存在于序列标记中。我们展示了如何克服这种差异。我们的方法可以与任何序列标记算法一起使用,它最为适用于字符串转换施加强烈的局部概念(没有长距离依赖性)。我们试验社交媒体,OCR校正和形态拐点的拼写修正,我们认为它比SEQ2Seq模型表现得更好,并在几种情况下产生最先进的结果。

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