## Adversarial evaluation of model performances Here is an example on evaluating a model using adversarial evaluation of natural language inference with the Heuristic Analysis for NLI Systems (HANS) dataset [McCoy et al., 2019](https://arxiv.org/abs/1902.01007). The example was gracefully provided by [Nafise Sadat Moosavi](https://github.com/ns-moosavi). The HANS dataset can be downloaded from [this location](https://github.com/tommccoy1/hans). This is an example of using test_hans.py: ```bash export HANS_DIR=path-to-hans export MODEL_TYPE=type-of-the-model-e.g.-bert-roberta-xlnet-etc export MODEL_PATH=path-to-the-model-directory-that-is-trained-on-NLI-e.g.-by-using-run_glue.py python run_hans.py \ --task_name hans \ --model_type $MODEL_TYPE \ --do_eval \ --data_dir $HANS_DIR \ --model_name_or_path $MODEL_PATH \ --max_seq_length 128 \ --output_dir $MODEL_PATH \ ``` This will create the hans_predictions.txt file in MODEL_PATH, which can then be evaluated using hans/evaluate_heur_output.py from the HANS dataset. The results of the BERT-base model that is trained on MNLI using batch size 8 and the random seed 42 on the HANS dataset is as follows: ```bash Heuristic entailed results: lexical_overlap: 0.9702 subsequence: 0.9942 constituent: 0.9962 Heuristic non-entailed results: lexical_overlap: 0.199 subsequence: 0.0396 constituent: 0.118 ```