Skip to yearly menu bar Skip to main content


Poster

Co-Generation with GANs using AIS based HMC

Tiantian Fang · Alex Schwing

East Exhibition Hall B + C #73

Keywords: [ Applications -> Computer Vision; Probabilistic Methods ] [ Latent Variable Models ] [ Adversarial Networks ] [ Deep Learning ]


Abstract:

Inferring the most likely configuration for a subset of variables of a joint distribution given the remaining ones -- which we refer to as co-generation -- is an important challenge that is computationally demanding for all but the simplest settings. This task has received a considerable amount of attention, particularly for classical ways of modeling distributions like structured prediction. In contrast, almost nothing is known about this task when considering recently proposed techniques for modeling high-dimensional distributions, particularly generative adversarial nets (GANs). Therefore, in this paper, we study the occurring challenges for co-generation with GANs. To address those challenges we develop an annealed importance sampling based Hamiltonian Monte Carlo co-generation algorithm. The presented approach significantly outperforms classical gradient based methods on a synthetic and on the CelebA and LSUN datasets.

Live content is unavailable. Log in and register to view live content