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Towards Improving Neural Named Entity Recognition with Gazetteers

机译:朝着用公鸡改善神经名为实体认可

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Most of the recently proposed neural models for named entity recognition have been purely data-driven, with a strong emphasis on getting rid of the efforts for collecting external resources or designing hand-crafted features. This could increase the chance of overfitting since the models cannot access any supervision signal beyond the small amount of annotated data, limiting their power to generalize beyond the annotated entities. In this work, we show that properly utilizing external gazetteers could benefit segmental neural NER models. We add a simple module on the recently proposed hybrid semi-Markov CRF architecture and observe some promising results.
机译:最近提出的名为实体识别的神经模型纯粹是数据驱动的,强调摆脱收集外部资源或设计手工制作功能的努力。这可能会增加过度装备的可能性,因为模型无法访问超出少量注释数据的监控信号,这限制了它们的力量以超越注释实体。在这项工作中,我们表明,适当利用外部公鸡可以使细分神经内衬里型号受益。我们在最近提出的混合半标率CRF架构上添加了一个简单的模块,并观察了一些有希望的结果。

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