Unsupervised cross-lingual model transfer for named entity recognition with contextualized word representations.

Journal: PloS one
Published Date:

Abstract

Named entity recognition (NER) is one fundamental task in the natural language processing (NLP) community. Supervised neural network models based on contextualized word representations can achieve highly-competitive performance, which requires a large-scale manually-annotated corpus for training. While for the resource-scarce languages, the construction of such as corpus is always expensive and time-consuming. Thus, unsupervised cross-lingual transfer is one good solution to address the problem. In this work, we investigate the unsupervised cross-lingual NER with model transfer based on contextualized word representations, which greatly advances the cross-lingual NER performance. We study several model transfer settings of the unsupervised cross-lingual NER, including (1) different types of the pretrained transformer-based language models as input, (2) the exploration strategies of the multilingual contextualized word representations, and (3) multi-source adaption. In particular, we propose an adapter-based word representation method combining with parameter generation network (PGN) better to capture the relationship between the source and target languages. We conduct experiments on a benchmark ConLL dataset involving four languages to simulate the cross-lingual setting. Results show that we can obtain highly-competitive performance by cross-lingual model transfer. In particular, our proposed adapter-based PGN model can lead to significant improvements for cross-lingual NER.

Authors

  • Huijiong Yan
    College of Mechanical and Vehicle Engineering, Taiyuan University of Technology, Taiyuan, China.
  • Tao Qian
    School of Computer Science and Technology, Hubei University of Science and Technology, Xianning, China.
  • Liang Xie
    Defense Innovation Institute, Academy of Military Sciences (AMS), Beijing, China.
  • Shanguang Chen
    College of Mechanical and Vehicle Engineering, Taiyuan University of Technology, Taiyuan, China.