The article introduces the concept of a "universal" password model that can adapt its guessing strategy based on auxiliary data without needing plaintext passwords. It uses deep learning to correlate users' auxiliary information with their passwords, creating tailored models for target systems. The model aims to democratize well-calibrated password models and address challenges in deploying password security solutions at scale. Password strength is not universal, and different communities have varying password distributions. Existing password models are trained at the password level, but a UNCM is trained at the password-leak level using credential databases.
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