LEG is a compact model that jointly classifies unsafe prompts and explains its decisions using synthetic training data and a custom uncertainty-weighted loss.
Traian Rebedea, Razvan Dinu, Makesh Narsimhan Sreedhar, Christopher Parisien, and Jonathan Cohen
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A Lightweight Explainable Guardrail for Prompt Safety
LEG is a compact model that jointly classifies unsafe prompts and explains its decisions using synthetic training data and a custom uncertainty-weighted loss.