This is the source code for the paper Generative Adversarial Training with Perturbed Token Detection for Robustness
. This project is build on DeBERTa-V3 and has tested on Ubuntu 20.04.5 LTS
with single GPU (V100 32GB).
- Create environment and install requirement packages using provided
environment.yml
:
conda env create -f environment.yml
conda activate GenerAT
- Download pre-trained model
- Download
pytorch_model.bin
andpytorch_model.generator.bin
from huggingface and put it in./deberta-v3-large
.
- Download
- Download glue data
python download_glue_data.py
Run the following bash scripts, it will train the model on corresponding dataset and report evaluation metrics.
- adv-rte
bash ./adv_glue/rte.sh
- adv-sst-2
bash ./adv_glue/sst2.sh
- adv-mnli
bash ./adv_glue/mnli.sh
- adv-qnli
bash ./adv_glue/qnli.sh
- adv-qqp
bash ./adv_glue/qqp.sh