English

R-Drop: Regularized Dropout for Neural Networks

Machine Learning 2021-11-01 v2

Abstract

Dropout is a powerful and widely used technique to regularize the training of deep neural networks. In this paper, we introduce a simple regularization strategy upon dropout in model training, namely R-Drop, which forces the output distributions of different sub models generated by dropout to be consistent with each other. Specifically, for each training sample, R-Drop minimizes the bidirectional KL-divergence between the output distributions of two sub models sampled by dropout. Theoretical analysis reveals that R-Drop reduces the freedom of the model parameters and complements dropout. Experiments on 5\bf{5} widely used deep learning tasks (18\bf{18} datasets in total), including neural machine translation, abstractive summarization, language understanding, language modeling, and image classification, show that R-Drop is universally effective. In particular, it yields substantial improvements when applied to fine-tune large-scale pre-trained models, e.g., ViT, RoBERTa-large, and BART, and achieves state-of-the-art (SOTA) performances with the vanilla Transformer model on WMT14 English\toGerman translation (30.91\bf{30.91} BLEU) and WMT14 English\toFrench translation (43.95\bf{43.95} BLEU), even surpassing models trained with extra large-scale data and expert-designed advanced variants of Transformer models. Our code is available at GitHub{\url{https://github.com/dropreg/R-Drop}}.

Keywords

Cite

@article{arxiv.2106.14448,
  title  = {R-Drop: Regularized Dropout for Neural Networks},
  author = {Xiaobo Liang and Lijun Wu and Juntao Li and Yue Wang and Qi Meng and Tao Qin and Wei Chen and Min Zhang and Tie-Yan Liu},
  journal= {arXiv preprint arXiv:2106.14448},
  year   = {2021}
}

Comments

Accepted by NeurIPS 2021

R2 v1 2026-06-24T03:39:18.871Z