Multi-marginal Wasserstein GAN
Cao, Jiezhang, Mo, Langyuan, Zhang, Yifan, Jia, Kui, Shen, Chunhua, Tan, Mingkui
Multiple marginal matching problem aims at learning mappings to match a source domain to multiple target domains and it has attracted great attention in many applications, such as multi-domain image translation. However, addressing this problem has two critical challenges: (i) Measuring the multi-marginal distance among different domains is very intractable; (ii) It is very difficult to exploit cross-domain correlations to match the target domain distributions. In this paper, we propose a novel Multi-marginal Wasserstein GAN (MWGAN) to minimize Wasserstein distance among domains. Specifically, with the help of multi-marginal optimal transport theory, we develop a new adversarial objective function with inner- and inter-domain constraints to exploit cross-domain correlations. Moreover, we theoretically analyze the generalization performance of MWGAN, and empirically evaluate it on the balanced and imbalanced translation tasks. Extensive experiments on toy and real-world datasets demonstrate the effectiveness of MWGAN.
Nov-3-2019
- Country:
- Asia > China (0.04)
- North America > Canada (0.04)
- Genre:
- Research Report (0.40)
- Industry:
- Health & Medicine (0.45)
- Information Technology (0.45)
- Technology: