| 구분 |
수학강연회 |
| 일정 |
2021-04-08 16:00 ~ 17:00 |
| 강연자 |
류경석 (서울대 수리과학부) |
| 기타 |
|
| 담당교수 |
현동훈 |
※Zoom 병행
- URL: https://snu-ac-kr.zoom.us/j/84678072601
- ID: 84678072601
Generative adversarial networks (GAN) are a widely used class of deep generative models, but their minimax training dynamics are not understood very well. In this work, we show that GANs with a 2-layer infinite-width generator and a 2-layer finite-width discriminator trained with stochastic gradient ascent-descent have no spurious stationary points. We then show that when the width of the generator is finite but wide, there are no spurious stationary points within a ball whose radius becomes arbitrarily large (to cover the entire parameter space) as the width goes to infinity.