Beta Diffusion
Mingyuan Zhou, Tianqi Chen, Zhendong Wang, Huangjie Zheng

TL;DR
Beta diffusion is a new generative modeling approach that uses multiplicative beta distributions to generate data within bounded ranges, offering improved optimization via KLUBs over traditional methods.
Contribution
Introduces beta diffusion, a multiplicative diffusion process with KLUB-based optimization, enhancing generative modeling of range-bounded data.
Findings
Effective in generating range-bounded data
KLUBs outperform negative ELBOs in optimization
Validated on synthetic and natural image datasets
Abstract
We introduce beta diffusion, a novel generative modeling method that integrates demasking and denoising to generate data within bounded ranges. Using scaled and shifted beta distributions, beta diffusion utilizes multiplicative transitions over time to create both forward and reverse diffusion processes, maintaining beta distributions in both the forward marginals and the reverse conditionals, given the data at any point in time. Unlike traditional diffusion-based generative models relying on additive Gaussian noise and reweighted evidence lower bounds (ELBOs), beta diffusion is multiplicative and optimized with KL-divergence upper bounds (KLUBs) derived from the convexity of the KL divergence. We demonstrate that the proposed KLUBs are more effective for optimizing beta diffusion compared to negative ELBOs, which can also be derived as the KLUBs of the same KL divergence with its two…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Generative Adversarial Networks and Image Synthesis · Music and Audio Processing
MethodsDiffusion
