Generative diffusion model with inverse renormalization group flows
- URL: http://arxiv.org/abs/2501.09064v1
- Date: Wed, 15 Jan 2025 19:00:01 GMT
- Title: Generative diffusion model with inverse renormalization group flows
- Authors: Kanta Masuki, Yuto Ashida,
- Abstract summary: Diffusion models produce data by denoising a sample corrupted by white noise.
We introduce a renormalization group-based diffusion model that leverages multiscale nature of data distributions.
We validate the versatility of the model through applications to protein structure prediction and image generation.
- Score: 0.0
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- Abstract: Diffusion models represent a class of generative models that produce data by denoising a sample corrupted by white noise. Despite the success of diffusion models in computer vision, audio synthesis, and point cloud generation, so far they overlook inherent multiscale structures in data and have a slow generation process due to many iteration steps. In physics, the renormalization group offers a fundamental framework for linking different scales and giving an accurate coarse-grained model. Here we introduce a renormalization group-based diffusion model that leverages multiscale nature of data distributions for realizing a high-quality data generation. In the spirit of renormalization group procedures, we define a flow equation that progressively erases data information from fine-scale details to coarse-grained structures. Through reversing the renormalization group flows, our model is able to generate high-quality samples in a coarse-to-fine manner. We validate the versatility of the model through applications to protein structure prediction and image generation. Our model consistently outperforms conventional diffusion models across standard evaluation metrics, enhancing sample quality and/or accelerating sampling speed by an order of magnitude. The proposed method alleviates the need for data-dependent tuning of hyperparameters in the generative diffusion models, showing promise for systematically increasing sample efficiency based on the concept of the renormalization group.
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