No Caption, No Problem: Caption-Free Membership Inference via Model-Fitted Embeddings
Abstract
Latent diffusion models have achieved remarkable success in high-fidelity text-to-image generation, but their tendency to memorize training data raises critical privacy and intellectual property concerns. Membership inference attacks (MIAs) provide a principled way to audit such memorization by determining whether a given sample was included in training. However, existing approaches assume access to ground-truth captions. This assumption fails in realistic scenarios where only images are available and their textual annotations remain undisclosed, rendering prior methods ineffective when substituted with vision-language model (VLM) captions. In this work, we propose MoFit , a caption-free MIA framework that constructs synthetic conditioning inputs that are explicitly overfitted to the target model's generative manifold. Given a query image, MoFit proceeds in two stages: (i) model-fitted surrogate optimization, where a perturbation applied to the image is optimized to construct a surrogate in regions of the model’s unconditional prior learned from member samples, and (ii) surrogate-driven embedding extraction, where a model-fitted embedding is derived from the surrogate and then used as a mismatched condition for the query image. This embedding amplifies conditional loss responses for member samples while leaving hold-outs relatively less affected, thereby enhancing separability in the absence of ground-truth captions. Our comprehensive experiments across multiple datasets and diffusion models demonstrate that MoFit consistently outperforms prior VLM-conditioned baselines and achieves performance competitive with caption-dependent methods.
Cite
Text
Jeon et al. "No Caption, No Problem: Caption-Free Membership Inference via Model-Fitted Embeddings." International Conference on Learning Representations, 2026.Markdown
[Jeon et al. "No Caption, No Problem: Caption-Free Membership Inference via Model-Fitted Embeddings." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/jeon2026iclr-caption/)BibTeX
@inproceedings{jeon2026iclr-caption,
title = {{No Caption, No Problem: Caption-Free Membership Inference via Model-Fitted Embeddings}},
author = {Jeon, Joonsung and Kim, Woo Jae and Ha, Suhyeon and Son, Sooel and Yoon, Sung-eui},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/jeon2026iclr-caption/}
}