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  4. On the regularization of Wasserstein GaNs
 
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2018
Conference Paper
Title

On the regularization of Wasserstein GaNs

Abstract
Since their invention, generative adversarial networks (GANs) have become a popular approach for learning to model a distribution of real (unlabeled) data. Convergence problems during training are overcome by Wasserstein GANs which minimize the distance between the model and the empirical distribution in terms of a different metric, but thereby introduce a Lipschitz constraint into the optimization problem. A simple way to enforce the Lipschitz constraint on the class of functions, which can be modeled by the neural network, is weight clipping. Augmenting the loss by a regularization term that penalizes the deviation of the gradient norm of the critic (as a function of the network's input) from one, was proposed as an alternative that improves training. We present theoretical arguments why using a weaker regularization term enforcing the Lipschitz constraint is preferable. These arguments are supported by experimental results on several data sets.
Author(s)
Petzka, Henning  
Fischer, Asja
Lukovnikov, Denis  
Mainwork
ICLR 2018 Conference Track. 6th International Conference on Learning Representations. Poster papers. Online resource  
Conference
International Conference on Learning Representations (ICLR) 2018  
Language
English
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
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