Generative adversarial learning with optimal input dimension and its adaptive generator architecture
Zhiyao Tan, Ling Zhou, Huazhen Lin

TL;DR
This paper introduces a novel framework called G-GANs that adaptively determines the optimal input dimension and generator architecture, improving stability, accuracy, and efficiency in generative adversarial networks through theoretical insights and extensive experiments.
Contribution
The paper proposes G-GANs, a framework that adaptively reduces input dimension and generator size, with theoretical validation and end-to-end training, enhancing GAN performance.
Findings
G-GANs outperform existing methods in benchmark datasets.
Adaptive input dimension reduces generator complexity.
Theoretical validation supports optimal dimension selection.
Abstract
We investigate the impact of the input dimension on the generalization error in generative adversarial networks (GANs). In particular, we first provide both theoretical and practical evidence to validate the existence of an optimal input dimension (OID) that minimizes the generalization error. Then, to identify the OID, we introduce a novel framework called generalized GANs (G-GANs), which includes existing GANs as a special case. By incorporating the group penalty and the architecture penalty developed in the paper, G-GANs have several intriguing features. First, our framework offers adaptive dimensionality reduction from the initial dimension to a dimension necessary for generating the target distribution. Second, this reduction in dimensionality also shrinks the required size of the generator network architecture, which is automatically identified by the proposed architecture…
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Taxonomy
TopicsNeural Networks and Applications · Generative Adversarial Networks and Image Synthesis · Advanced Image Processing Techniques
MethodsALIGN
