LADA-Trans-NER:基于词典关注和数据增强的中文命名实体识别自适应高效转换器

Jiguo Liu, Chao Liu, Nan Li, Shihao Gao, Mingqi Liu, Dali Zhu
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引用次数: 1

摘要

近年来,词增强技术在中文命名实体识别(NER)中非常流行,它可以减少分词错误,增加中文词的语义和边界信息。然而,这些方法在整合词汇信息后往往忽略了句子前后的语义关系。因此,在各种字字融合方法中,对字长信息的规律性研究并不充分。在这项工作中,我们提出了一种词典关注和数据增强(LADA)方法。我们讨论了使用现有方法合并NER单词信息的挑战,并展示了如何利用我们提出的方法来克服这些挑战。LADA是基于一个变压器编码器,利用词典构造一个有向图,并通过更新图的最优边来融合单词信息。特别地,我们引入了先进的数据增强方法来获得NER任务的最优表示。实验结果表明,在简历、MSRA、微博和OntoNotes v4四个公开的NER数据集上,使用LADA进行的增强可以显著提高我们的NER系统的性能,并且取得了明显优于之前最先进的方法和文献中的变体模型的结果。我们还观察到LADA在多源复杂实体上更好的泛化和应用于现实环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LADA-Trans-NER: Adaptive Efficient Transformer for Chinese Named Entity Recognition Using Lexicon-Attention and Data-Augmentation
Recently, word enhancement has become very popular for Chinese Named Entity Recognition (NER), reducing segmentation errors and increasing the semantic and boundary information of Chinese words. However, these methods tend to ignore the semantic relationship before and after the sentence after integrating lexical information. Therefore, the regularity of word length information has not been fully explored in various word-character fusion methods. In this work, we propose a Lexicon-Attention and Data-Augmentation (LADA) method for Chinese NER. We discuss the challenges of using existing methods in incorporating word information for NER and show how our proposed methods could be leveraged to overcome those challenges. LADA is based on a Transformer Encoder that utilizes lexicon to construct a directed graph and fuses word information through updating the optimal edge of the graph. Specially, we introduce the advanced data augmentation method to obtain the optimal representation for the NER task. Experimental results show that the augmentation done using LADA can considerably boost the performance of our NER system and achieve significantly better results than previous state-of-the-art methods and variant models in the literature on four publicly available NER datasets, namely Resume, MSRA, Weibo, and OntoNotes v4. We also observe better generalization and application to a real-world setting from LADA on multi-source complex entities.
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