Nowadays, many Natural Language Processing (NLP) tasks see the demand for incorporating knowledge external to the local information to further improve the performance. However, there is little related work on Named Entity Recognition (NER), which is one of the foundations of NLP. Specifically, no studies were conducted on the query generation and re-ranking for retrieving the related information for the purpose of improving NER. This work demonstrates the effectiveness of a DNN-based query generation method and a mention-aware re-ranking architecture based on BERTScore particularly for NER. In the end, a state-of-the-art performance of 61.56 micro-f1 score on WNUT17 dataset is achieved.
翻译:目前,许多自然语言处理(NLP)任务都看到,需要将知识纳入当地信息之外,以进一步改善业绩,然而,在命名实体识别(NER)方面几乎没有相关工作,这是NLP的基础之一。 具体地说,没有就检索相关信息的查询生成和重新排序进行研究,以改进NER。这项工作显示了基于DNN的查询生成方法和以BERTScore为基础、特别是以NER为主的提及性再排序结构的有效性。 最终,在WNUT17数据集方面实现了61.56分的最先进的成绩。</s>