Spontaneous Symmetry Breaking in Generative Diffusion Models
- URL: http://arxiv.org/abs/2305.19693v3
- Date: Thu, 26 Oct 2023 16:02:56 GMT
- Title: Spontaneous Symmetry Breaking in Generative Diffusion Models
- Authors: Gabriel Raya, Luca Ambrogioni
- Abstract summary: Generative diffusion models have recently emerged as a leading approach for generating high-dimensional data.
We show that the dynamics of these models exhibit a spontaneous symmetry breaking that divides the generative dynamics into two distinct phases.
We propose a new way to understand the generative dynamics of diffusion models that has the potential to bring about higher performance and less biased fast-samplers.
- Score: 6.4322891559626125
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Generative diffusion models have recently emerged as a leading approach for
generating high-dimensional data. In this paper, we show that the dynamics of
these models exhibit a spontaneous symmetry breaking that divides the
generative dynamics into two distinct phases: 1) A linear steady-state dynamics
around a central fixed-point and 2) an attractor dynamics directed towards the
data manifold. These two "phases" are separated by the change in stability of
the central fixed-point, with the resulting window of instability being
responsible for the diversity of the generated samples. Using both theoretical
and empirical evidence, we show that an accurate simulation of the early
dynamics does not significantly contribute to the final generation, since early
fluctuations are reverted to the central fixed point. To leverage this insight,
we propose a Gaussian late initialization scheme, which significantly improves
model performance, achieving up to 3x FID improvements on fast samplers, while
also increasing sample diversity (e.g., racial composition of generated CelebA
images). Our work offers a new way to understand the generative dynamics of
diffusion models that has the potential to bring about higher performance and
less biased fast-samplers.
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