Statistical Guarantees of Group-Invariant GANs
Chen, Ziyu, Katsoulakis, Markos A., Rey-Bellet, Luc, Zhu, Wei
Group-invariant generative adversarial networks (GANs) are a type of GANs in which the generators and discriminators are hardwired with group symmetries. Empirical studies have shown that these networks are capable of learning group-invariant distributions with significantly improved data efficiency. In this study, we aim to rigorously quantify this improvement by analyzing the reduction in sample complexity for group-invariant GANs. Our findings indicate that when learning group-invariant distributions, the number of samples required for group-invariant GANs decreases proportionally with a power of the group size, and this power depends on the intrinsic dimension of the distribution's support. To our knowledge, this work presents the first statistical estimation for group-invariant generative models, specifically for GANs, and it may shed light on the study of other group-invariant generative models.
Oct-16-2023
- Country:
- North America > United States > Massachusetts (0.28)
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- Research Report > New Finding (0.86)
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- Health & Medicine (0.46)
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