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Domain-Transferable Method for Named Entity Recognition Task

机译:命名实体识别任务的域可传输方法

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Named Entity Recognition (NER) is a fundamental task in the fields of natural language processing and information extraction. NER has been widely used as a standalone tool or an essential component in a variety of applications such as question answering, dialogue assistants and knowledge graphs development. However, training reliable NER models requires a large amount of labelled data which is expensive to obtain, particularly in specialized domains. This paper describes a method to learn a domain-specific NER model for an arbitrary set of named entities when domain-specific supervision is not available. We assume that the supervision can be obtained with no human effort, and neural models can learn from each other. The code, data and models are publicly available.
机译:命名实体识别(ner)是自然语言处理和信息提取领域的基本任务。 Ner已被广泛用作独立工具或各种应用中的基本组成部分,如问题应答,对话助理和知识图形开发。然而,训练可靠的NER模型需要大量标记的数据,这是昂贵的,特别是在专用域中获得昂贵的数据。本文介绍了一种用于在特定于域的监督时学习用于任意集命名实体集的域的特定网型的方法。我们假设无法使用人类努力获得监督,并且神经模型可以彼此学习。代码,数据和模型是公开可用的。

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