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Named Entity Recognition for Novel Types by Transfer Learning

机译:通过转移学习对新颖类型命名实体识别

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In named entity recognition, we often don't have a large in-domain training corpus or a knowledge base with adequate coverage to train a model directly. In this paper, we propose a method where, given training data in a related domain with similar (but not identical) named entity (NE) types and a small amount of in-domain training data, we use transfer learning to learn a domain-specific NE model. That is, the novelty in the task setup is that we assume not just domain mismatch, but also label mismatch.
机译:在命名实体识别中,我们通常没有大型的领域内训练语料库或具有足够覆盖范围的知识库来直接训练模型。在本文中,我们提出了一种方法,在给定相关数据域中具有相似(但不相同)命名实体(NE)类型的训练数据和少量域内训练数据的情况下,我们使用转移学习来学习一个特定的网元模型。也就是说,任务设置中的新颖之处在于我们不仅假定域不匹配,而且还假定标签不匹配。

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