62
14

EraseDiff: Erasing Data Influence in Diffusion Models

Jing Wu
Trung Le
Munawar Hayat
Mehrtash Harandi
Abstract

In this work, we introduce an unlearning algorithm for diffusion models. Our algorithm equips a diffusion model with a mechanism to mitigate the concerns related to data memorization. To achieve this, we formulate the unlearning problem as a constraint optimization problem, aiming to preserve the utility of the diffusion model on the remaining data and scrub the information associated with forgetting data by deviating the learnable generative process from the ground-truth denoising procedure. To solve the resulting problem, we adopt a first-order method, having superior practical performance while being vigilant about the diffusion process. Empirically, we demonstrate that our algorithm can preserve the model utility, effectiveness, and efficiency while removing across the widely-used diffusion models and in both conditional and unconditional image generation scenarios.

View on arXiv
Comments on this paper