A Cubic Algorithm for Computing Gaussian Volume
Data Structures and Algorithms
2013-07-12 v2 Functional Analysis
Probability
Abstract
We present randomized algorithms for sampling the standard Gaussian distribution restricted to a convex set and for estimating the Gaussian measure of a convex set, in the general membership oracle model. The complexity of integration is while the complexity of sampling is for the first sample and for every subsequent sample. These bounds improve on the corresponding state-of-the-art by a factor of . Our improvement comes from several aspects: better isoperimetry, smoother annealing, avoiding transformation to isotropic position and the use of the "speedy walk" in the analysis.
Cite
@article{arxiv.1306.5829,
title = {A Cubic Algorithm for Computing Gaussian Volume},
author = {Ben Cousins and Santosh Vempala},
journal= {arXiv preprint arXiv:1306.5829},
year = {2013}
}
Comments
23 pages