Poster
$\textit{Revelio}$: Interpreting and leveraging semantic information in diffusion models
Dahye Kim · Xavier Thomas · Deepti Ghadiyaram
[
Abstract
]
Abstract:
We study $\textit{how}$ rich visual semantic information is represented within various layers and denoising timesteps of different diffusion architectures. We uncover monosemantic interpretable features by leveraging k-sparse autoencoders (k-SAE). We substantiate our mechanistic interpretations via transfer learning using light-weight classifiers on off-the-shelf diffusion models' features. On $4$ datasets, we demonstrate the effectiveness of diffusion features for representation learning. We provide an in-depth analysis of how different diffusion architectures, pre-training datasets, and language model conditioning impacts visual representation granularity, inductive biases, and transfer learning capabilities. Our work is a critical step towards deepening interpretability of black-box diffusion models. Code and visualizations available at: \url{https://github.com/revelio-diffusion/revelio}
Live content is unavailable. Log in and register to view live content