MockingBERT: Making Transformer Models Resilient to Adversarial Misspellings
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Updated
May 25, 2022 - Jupyter Notebook
MockingBERT: Making Transformer Models Resilient to Adversarial Misspellings
Code to generate and extend the TCAB dataset.
🛡️ Detect and combat fake reviews in multiple languages with RevGuard NLP, leveraging adversarial robustness and explainable AI for real-time analysis.
End-to-end NLI classifier on the Adversarial NLI (ANLI) Round 2 benchmark — EDA, baselines, DeBERTa-v3 evaluation (base & large), error analysis, FastAPI inference API with live model switching, Docker deployment, and interactive web UI.
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