AIMar 19

A Concept is More Than a Word: Diversified Unlearning in Text-to-Image Diffusion Models

arXiv:2603.1876722.9h-index: 11
AI Analysis

This addresses the problem of harmful content generation in AI models for users by improving unlearning precision, though it is incremental as an add-on to existing pipelines.

The paper tackles the brittleness of keyword-based concept unlearning in text-to-image diffusion models by proposing a distributional framework using diverse prompts, which achieves stronger erasure, better retention of unrelated concepts, and improved robustness against adversarial attacks in experiments.

Concept unlearning has emerged as a promising direction for reducing the risks of harmful content generation in text-to-image diffusion models by selectively erasing undesirable concepts from a model's parameters. Existing approaches typically rely on keywords to identify the target concept to be unlearned. However, we show that this keyword-based formulation is inherently limited: a visual concept is multi-dimensional, can be expressed in diverse textual forms, and often overlap with related concepts in the latent space, making keyword-only unlearning, which imprecisely indicate the target concept is brittle and prone to over-forgetting. This occurs because a single keyword represents only a narrow point estimate of the concept, failing to cover its full semantic distribution and entangled variations in the latent space. To address this limitation, we propose Diversified Unlearning, a distributional framework that represents a concept through a set of contextually diverse prompts rather than a single keyword. This richer representation enables more precise and robust unlearning. Through extensive experiments across multiple benchmarks and state-of-the-art baselines, we demonstrate that integrating Diversified Unlearning as an add-on component into existing unlearning pipelines consistently achieves stronger erasure, better retention of unrelated concepts, and improved robustness against adversarial recovery attacks.

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