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[ARTICLE · art-16039] src=arxiv.org pub= topic=machine-learning verified=true sentiment=· neutral

RULER: Representation-Level Verification of Machine Unlearning

Researchers introduced RULER, a set of representation-level verification metrics for machine unlearning, after finding that current output-level tests can pass even when models retain forgotten data internally. The oracle-comparative metric M2 detected significant residual information in 10 of 12 conditions across four approximate unlearning methods, while the oracle-free metric M4 identified identity-level memorization in face recognition models that no tested method could fully erase. The findings expose a critical gap in existing unlearning verification protocols, revealing that models can satisfy membership inference and accuracy benchmarks while still encoding forgotten records in their intermediate representations.

read1 min publishedMay 28, 2026

arXiv:2605.27569v1 Announce Type: new Abstract: Machine unlearning aims to remove the influence of specific training records from a deployed model without retraining from scratch. Current protocols verify this at the output level through membership inference, retain accuracy, and forget-set accuracy, but a model can satisfy all three whilst still encoding forgotten records in its intermediate representations. We introduce RULER, a set of representation-level verification metrics. The oracle-comparative metric M2 measures whether forget-set records occupy the same representational position as in a model retrained without them. The oracle-free metric M4 detects residuals from the unlearned model's internal similarity structure alone, without retraining. Four approximate unlearning methods all pass output-level evaluation, yet under a linear mixed-effects model M2 detects significant residuals in 10 of 12 conditions (p<0.05), with effect sizes growing as the forget fraction increases. A fifth method, Bad Teacher, shows the same residuals despite a different forgetting mechanism. M4 acts as a pre-unlearning diagnostic across tabular, image, clinical text, and face-identity settings: it detects identity-level memorisation in face recognition models where no tested method fully erases the signal.

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