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Papers/EAGAN: Efficient Two-stage Evolutionary Architecture Searc...

EAGAN: Efficient Two-stage Evolutionary Architecture Search for GANs

Guohao Ying, Xin He, Bin Gao, Bo Han, Xiaowen Chu

2021-11-30Neural Architecture SearchUnconditional Image GenerationImage GenerationVocal Bursts Valence Prediction
PaperPDFCode(official)

Abstract

Generative adversarial networks (GANs) have proven successful in image generation tasks. However, GAN training is inherently unstable. Although many works try to stabilize it by manually modifying GAN architecture, it requires much expertise. Neural architecture search (NAS) has become an attractive solution to search GANs automatically. The early NAS-GANs search only generators to reduce search complexity but lead to a sub-optimal GAN. Some recent works try to search both generator (G) and discriminator (D), but they suffer from the instability of GAN training. To alleviate the instability, we propose an efficient two-stage evolutionary algorithm-based NAS framework to search GANs, namely EAGAN. We decouple the search of G and D into two stages, where stage-1 searches G with a fixed D and adopts the many-to-one training strategy, and stage-2 searches D with the optimal G found in stage-1 and adopts the one-to-one training and weight-resetting strategies to enhance the stability of GAN training. Both stages use the non-dominated sorting method to produce Pareto-front architectures under multiple objectives (e.g., model size, Inception Score (IS), and Fr\'echet Inception Distance (FID)). EAGAN is applied to the unconditional image generation task and can efficiently finish the search on the CIFAR-10 dataset in 1.2 GPU days. Our searched GANs achieve competitive results (IS=8.81$\pm$0.10, FID=9.91) on the CIFAR-10 dataset and surpass prior NAS-GANs on the STL-10 dataset (IS=10.44$\pm$0.087, FID=22.18). Source code: https://github.com/marsggbo/EAGAN.

Results

TaskDatasetMetricValueModel
Image GenerationSTL-10FID22.18EAGAN (G+D)
Image GenerationSTL-10Inception score10.44EAGAN (G+D)
Image GenerationSTL-10FID23.34EAGAN (G)
Image GenerationSTL-10Inception score10.02EAGAN (G)
Image GenerationCIFAR-10FID9.91EAGAN (G+D)
Image GenerationCIFAR-10FID10.14EAGAN (G)

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