LGAICVOct 7, 2025

Learning What Matters: Steering Diffusion via Spectrally Anisotropic Forward Noise

arXiv:2510.09660v3h-index: 56
Originality Incremental advance
AI Analysis

This work provides a principled method to tailor inductive biases in diffusion models, which is incremental but useful for researchers in generative modeling.

The authors tackled the problem of implicit inductive biases in diffusion probabilistic models by introducing spectrally anisotropic Gaussian diffusion (SAGD), which uses structured noise to shape biases and outperforms standard diffusion on vision datasets, enabling selective omission of corruptions.

Diffusion Probabilistic Models (DPMs) have achieved strong generative performance, yet their inductive biases remain largely implicit. In this work, we aim to build inductive biases into the training and sampling of diffusion models to better accommodate the target distribution of the data to model. We introduce an anisotropic noise operator that shapes these biases by replacing the isotropic forward covariance with a structured, frequency-diagonal covariance. This operator unifies band-pass masks and power-law weightings, allowing us to emphasize or suppress designated frequency bands, while keeping the forward process Gaussian. We refer to this as spectrally anisotropic Gaussian diffusion (SAGD). In this work, we derive the score relation for anisotropic covariances and show that, under full support, the learned score converges to the true data score as $t\!\to\!0$, while anisotropy reshapes the probability-flow path from noise to data. Empirically, we show the induced anisotropy outperforms standard diffusion across several vision datasets, and enables selective omission: learning while ignoring known corruptions confined to specific bands. Together, these results demonstrate that carefully designed anisotropic forward noise provides a simple, yet principled, handle to tailor inductive bias in DPMs.

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