English

Supervised Contrastive Learning for Pre-trained Language Model Fine-tuning

Computation and Language 2021-04-06 v3 Machine Learning

Abstract

State-of-the-art natural language understanding classification models follow two-stages: pre-training a large language model on an auxiliary task, and then fine-tuning the model on a task-specific labeled dataset using cross-entropy loss. However, the cross-entropy loss has several shortcomings that can lead to sub-optimal generalization and instability. Driven by the intuition that good generalization requires capturing the similarity between examples in one class and contrasting them with examples in other classes, we propose a supervised contrastive learning (SCL) objective for the fine-tuning stage. Combined with cross-entropy, our proposed SCL loss obtains significant improvements over a strong RoBERTa-Large baseline on multiple datasets of the GLUE benchmark in few-shot learning settings, without requiring specialized architecture, data augmentations, memory banks, or additional unsupervised data. Our proposed fine-tuning objective leads to models that are more robust to different levels of noise in the fine-tuning training data, and can generalize better to related tasks with limited labeled data.

Keywords

Cite

@article{arxiv.2011.01403,
  title  = {Supervised Contrastive Learning for Pre-trained Language Model Fine-tuning},
  author = {Beliz Gunel and Jingfei Du and Alexis Conneau and Ves Stoyanov},
  journal= {arXiv preprint arXiv:2011.01403},
  year   = {2021}
}
R2 v1 2026-06-23T19:52:12.582Z