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Projected Gradient Unlearning for Text-to-Image Diffusion Models: Defending Against Concept Revival Attacks

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Machine unlearning for text-to-image diffusion models aims to selectively remove undesirable concepts from pre-trained models without costly retraining. Current unlearning methods share a common weakness: erased concepts return when the model is fine-tuned on downstream data, even when that data is entirely unrelated. We adapt Projected Gradient Unlearning (PGU) from classification to the diffusion domain as a post-hoc hardening step. By constructing a Core Gradient Space (CGS) from the retain concept activations and projecting gradient updates into its orthogonal complement, PGU ensures that subsequent fine-tuning cannot undo the achieved erasure. Applied on top of existing methods (ESD, UCE, Receler), the approach eliminates revival for style concepts and substantially delays it for object concepts, running in roughly 6 minutes versus the ~2 hours required by Meta-Unlearning. PGU and Meta-Unlearning turn out to be complementary: which performs better depends on how the concept is encoded, and retain concept selection should follow visual feature similarity rather than semantic grouping.

Aljalila Aladawi, Mohammed Talha Alam, Fakhri Karray• 2026

Related benchmarks

TaskDatasetResultRank
Concept Erasure Defense EvaluationVan Gogh (VG)
Accuracy28.6
8
Concept Erasure Defense EvaluationGolf Ball (GB)
Classifier Accuracy40
6
Concept UnlearningGolf Ball Object Concept
Max Accuracy40
3
Concept UnlearningVan Gogh Style Concept
Revival Checkpoint Config0.7
3
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