TL;DR
This paper introduces a data-driven adversarial sampling method using GANs to generate samples from unknown high-dimensional conditional distributions, especially when limited data points are available for continuous conditioning variables.
Contribution
It proposes a novel approach combining GANs with conditional moment estimation to effectively sample from unknown high-dimensional conditional distributions with minimal quality loss.
Findings
Effective sampling of target conditional distributions demonstrated
Method compares stochastic estimation and neural network approaches
Can serve as a diversity metric for conditional GANs
Abstract
Many engineering problems require the prediction of realization-to-realization variability or a refined description of modeled quantities. In that case, it is necessary to sample elements from unknown high-dimensional spaces with possibly millions of degrees of freedom. While there exist methods able to sample elements from probability density functions (PDF) with known shapes, several approximations need to be made when the distribution is unknown. In this paper the sampling method, as well as the inference of the underlying distribution, are both handled with a data-driven method known as generative adversarial networks (GAN), which trains two competing neural networks to produce a network that can effectively generate samples from the training set distribution. In practice, it is often necessary to draw samples from conditional distributions. When the conditional variables are…
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