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arxiv: 2212.10777 · v4 · pith:XTBB3PJ7new · submitted 2022-12-21 · 💻 cs.LG · cs.AI

Hierarchically branched diffusion models leverage dataset structure for class-conditional generation

classification 💻 cs.LG cs.AI
keywords diffusionmodelsbranchedclass-conditionalgenerationnovelstructureclasses
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Class-labeled datasets, particularly those common in scientific domains, are rife with internal structure, yet current class-conditional diffusion models ignore these relationships and implicitly diffuse on all classes in a flat fashion. To leverage this structure, we propose hierarchically branched diffusion models as a novel framework for class-conditional generation. Branched diffusion models rely on the same diffusion process as traditional models, but learn reverse diffusion separately for each branch of a hierarchy. We highlight several advantages of branched diffusion models over the current state-of-the-art methods for class-conditional diffusion, including extension to novel classes in a continual-learning setting, a more sophisticated form of analogy-based conditional generation (i.e. transmutation), and a novel interpretability into the generation process. We extensively evaluate branched diffusion models on several benchmark and large real-world scientific datasets spanning many data modalities.

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