MetaGAN: An Adversarial Approach to Few-Shot Learning

ZHANG, Ruixiang, Che, Tong, Ghahramani, Zoubin, Bengio, Yoshua, Song, Yangqiu

Neural Information Processing Systems 

In this paper, we propose a conceptually simple and general framework called MetaGAN for few-shot learning problems. Most state-of-the-art few-shot classification models can be integrated with MetaGAN in a principled and straightforward way. By introducing an adversarial generator conditioned on tasks, we augment vanilla few-shot classification models with the ability to discriminate between real and fake data. We argue that this GAN-based approach can help few-shot classifiers to learn sharper decision boundary, which could generalize better. We show that with our MetaGAN framework, we can extend supervised few-shot learning models to naturally cope with unsupervised data.