AI RESEARCH
Why Instruction-Based Unlearning Fails in Diffusion Models?
arXiv CS.CV
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ArXi:2604.01514v1 Announce Type: cross Instruction-based unlearning has proven effective for modifying the behavior of large language models at inference time, but whether this paradigm extends to other generative models remains unclear. In this work, we investigate instruction-based unlearning in diffusion-based image generation models and show, through controlled experiments across multiple concepts and prompt variants, that diffusion models systematically fail to suppress targeted concepts when guided solely by natural-language unlearning instructions.