FreeLB: Enhanced Adversarial Training for Natural Language Understanding

  • Chen Zhu ,
  • Yu Cheng ,
  • Zhe Gan ,
  • Siqi Sun ,
  • Tom Goldstein ,
  • Jingjing Liu

Eighth International Conference on Learning Representations (ICLR) |

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Adversarial training, which minimizes the maximal risk for label-preserving input perturbations, has proved to be effective for improving the generalization of language models. In this work, we propose a novel adversarial training algorithm, FreeLB, that promotes higher invariance in the embedding space, by adding adversarial perturbations to word embeddings and minimizing the resultant adversarial risk inside different regions around input samples. To validate the effectiveness of the proposed approach, we apply it to Transformer-based models for natural language understanding and commonsense reasoning tasks. Experiments on the GLUE benchmark show that when applied only to the finetuning stage, it is able to improve the overall test scores of BERT-base model from 78.3 to 79.4, and RoBERTa-large model from 88.5 to 88.8. In addition, the proposed approach achieves state-of-the-art single-model test accuracies of 85.44% and 67.75% on ARC-Easy and ARC-Challenge. Experiments on CommonsenseQA benchmark further demonstrate that FreeLB can be generalized and boost the performance of RoBERTa-large model on other tasks as well.

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FreeLB

April 16, 2020

FreeLB is an adversarial training approach for improving transformer-based language models on Natural Language Understanding tasks. It accumulates the gradient in the ascent steps and updates the parameters with the accumulated gradients, which is approximately equivalent to enlarging the batch size with diversified adversarial examples within different radiuses around the clean input. FreeLB improves the performance of BERT and RoBERTa on various Natural Language Understanding tasks including Question Answering, Natural Language Inference, and Sentiment Analysis.