thunlp/Advbench

Code and data of the EMNLP 2022 paper "Why Should Adversarial Perturbations be Imperceptible? Rethink the Research Paradigm in Adversarial NLP".

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Language

Python

License

MIT

Last pushed

Feb 19, 2023

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