English

CONTaiNER: Few-Shot Named Entity Recognition via Contrastive Learning

Computation and Language 2022-03-29 v2

Abstract

Named Entity Recognition (NER) in Few-Shot setting is imperative for entity tagging in low resource domains. Existing approaches only learn class-specific semantic features and intermediate representations from source domains. This affects generalizability to unseen target domains, resulting in suboptimal performances. To this end, we present CONTaiNER, a novel contrastive learning technique that optimizes the inter-token distribution distance for Few-Shot NER. Instead of optimizing class-specific attributes, CONTaiNER optimizes a generalized objective of differentiating between token categories based on their Gaussian-distributed embeddings. This effectively alleviates overfitting issues originating from training domains. Our experiments in several traditional test domains (OntoNotes, CoNLL'03, WNUT '17, GUM) and a new large scale Few-Shot NER dataset (Few-NERD) demonstrate that on average, CONTaiNER outperforms previous methods by 3%-13% absolute F1 points while showing consistent performance trends, even in challenging scenarios where previous approaches could not achieve appreciable performance.

Keywords

Cite

@article{arxiv.2109.07589,
  title  = {CONTaiNER: Few-Shot Named Entity Recognition via Contrastive Learning},
  author = {Sarkar Snigdha Sarathi Das and Arzoo Katiyar and Rebecca J. Passonneau and Rui Zhang},
  journal= {arXiv preprint arXiv:2109.07589},
  year   = {2022}
}

Comments

Accepted by ACL 2022 (Main Conference, Long Paper)

R2 v1 2026-06-24T06:00:21.650Z