Stochastic Gradient Geodesic MCMC Methods

Abstract

We propose two stochastic gradient MCMC methods for sampling from Bayesian posterior distributions defined on Riemann manifolds with a known geodesic flow, e.g. hyperspheres. Our methods are the first scalable sampling methods on these manifolds, with the aid of stochastic gradients. Novel dynamics are conceived and 2nd-order integrators are developed. By adopting embedding techniques and the geodesic integrator, the methods do not require a global coordinate system of the manifold and do not involve inner iterations. Synthetic experiments show the validity of the method, and its application to the challenging inference for spherical topic models indicate practical usability and efficiency.

Cite

Text

Liu et al. "Stochastic Gradient Geodesic MCMC Methods." Neural Information Processing Systems, 2016.

Markdown

[Liu et al. "Stochastic Gradient Geodesic MCMC Methods." Neural Information Processing Systems, 2016.](https://mlanthology.org/neurips/2016/liu2016neurips-stochastic/)

BibTeX

@inproceedings{liu2016neurips-stochastic,
  title     = {{Stochastic Gradient Geodesic MCMC Methods}},
  author    = {Liu, Chang and Zhu, Jun and Song, Yang},
  booktitle = {Neural Information Processing Systems},
  year      = {2016},
  pages     = {3009-3017},
  url       = {https://mlanthology.org/neurips/2016/liu2016neurips-stochastic/}
}