Don't be so negative! Score-based Generative Modeling with Oracle-assisted Guidance
Don't be so negative! Score-based Generative Modeling with Oracle-assisted Guidance
Score-based diffusion models are a powerful class of generative models, widely utilized across diverse domains. Despite significant advancements in large-scale tasks such as text-to-image generation, their application to constrained domains has received considerably less attention. This work addresses model learning in a setting where, in addition to the training dataset, there further exists side-information in the form of an oracle that can label samples as being outside the support of the true data generating distribution. Specifically we develop a new denoising diffusion probabilistic modeling methodology, Gen-neG, that leverages this additional side-information. Gen-neG builds on classifier guidance in diffusion models to guide the generation process towards the positive support region indicated by the oracle. We empirically establish the utility of Gen-neG in applications including collision avoidance in self-driving simulators and safety-guarded human motion generation.
Saeid Naderiparizi、Xiaoxuan Liang、Setareh Cohan、Berend Zwartsenberg、Frank Wood
计算技术、计算机技术
Saeid Naderiparizi,Xiaoxuan Liang,Setareh Cohan,Berend Zwartsenberg,Frank Wood.Don't be so negative! Score-based Generative Modeling with Oracle-assisted Guidance[EB/OL].(2025-07-12)[2025-08-02].https://arxiv.org/abs/2307.16463.点此复制
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