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Cross-Domain NER using Cross-Domain Language Modeling

机译:使用跨域语言建模的跨域网

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Due to limitation of labeled resources, cross-domain named entity recognition (NER) has been a challenging task. Most existing work considers a supervised setting, making use of labeled data for both the source and target domains. A disadvantage of such methods is that they cannot train for domains without NER data. To address this issue, we consider using cross-domain LM as a bridge cross-domains for NER domain adaptation, performing cross-domain and cross-task knowledge transfer by designing a novel parameter generation network. Results show that our method can effectively extract domain differences from cross-domain LM contrast, allowing unsupervised domain adaptation while also giving state-of-the-art results among supervised domain adaptation methods.
机译:由于标记资源的限制,跨域命名实体识别(ner)是一个具有挑战性的任务。大多数现有工作都考虑了监督设置,利用源和目标域的标记数据。这些方法的缺点是他们不能为没有ner数据的域训练。为了解决这个问题,我们考虑使用跨域LM作为ner域适应的桥梁跨域,通过设计新颖的参数生成网络来执行跨域和交叉任务知识传输。结果表明,我们的方法可以有效地提取与跨域LM对比度的域差异,允许无监督的域适应,同时在监督域适应方法之间提供最先进的结果。

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