Shaping Inductive Bias in Diffusion Models through Frequency-Based Noise Control
- URL: http://arxiv.org/abs/2502.10236v1
- Date: Fri, 14 Feb 2025 15:46:37 GMT
- Title: Shaping Inductive Bias in Diffusion Models through Frequency-Based Noise Control
- Authors: Thomas Jiralerspong, Berton Earnshaw, Jason Hartford, Yoshua Bengio, Luca Scimeca,
- Abstract summary: We build inductive biases into the training and sampling of Diffusion Probabilistic Models (DPMs)
We show that different datasets necessitate different inductive biases, and that appropriate frequency-based noise control induces increased generative performance compared to standard diffusion.
- Score: 43.87692887705523
- License:
- Abstract: Diffusion Probabilistic Models (DPMs) are powerful generative models that have achieved unparalleled success in a number of generative tasks. 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. For topologically structured data, we devise a frequency-based noising operator to purposefully manipulate, and set, these inductive biases. We first show that appropriate manipulations of the noising forward process can lead DPMs to focus on particular aspects of the distribution to learn. We show that different datasets necessitate different inductive biases, and that appropriate frequency-based noise control induces increased generative performance compared to standard diffusion. Finally, we demonstrate the possibility of ignoring information at particular frequencies while learning. We show this in an image corruption and recovery task, where we train a DPM to recover the original target distribution after severe noise corruption.
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