Stein Neural Sampler
About
We propose two novel samplers to generate high-quality samples from a given (un-normalized) probability density. Motivated by the success of generative adversarial networks, we construct our samplers using deep neural networks that transform a reference distribution to the target distribution. Training schemes are developed to minimize two variations of the Stein discrepancy, which is designed to work with un-normalized densities. Once trained, our samplers are able to generate samples instantaneously. We show that the proposed methods are theoretically sound and experience fewer convergence issues compared with traditional sampling approaches according to our empirical studies.
Tianyang Hu, Zixiang Chen, Hanxi Sun, Jincheng Bai, Mao Ye, Guang Cheng• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 2D Synthetic Target Sampling | FUNNEL 2D Synthetic | KSD0.396 | 8 | |
| 2D Synthetic Target Sampling | Gaussian 2D Synthetic | KSD0.206 | 8 | |
| 2D Synthetic Target Sampling | MOG2 2D Synthetic | KSD1.129 | 8 | |
| 2D Synthetic Target Sampling | ROSENBROCK 2D Synthetic | KSD1.531 | 8 | |
| 2D Synthetic Target Sampling | DONUT 2D Synthetic | KSD0.341 | 8 | |
| 2D Synthetic Target Sampling | SQUIGGLE Synthetic 2D | KSD0.462 | 8 |
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