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arxiv:2411.16725

Revelio: Interpreting and leveraging semantic information in diffusion models

Published on Nov 23, 2024

Abstract

Rich visual semantic information in diffusion architectures is analyzed through k-sparse autoencoders, revealing monosemantic features and their impact on representation granularity, inductive biases, and transfer learning.

We study 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 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: https://github.com/revelio-diffusion/revelio

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