Integrals over Gaussians under Linear Domain Constraints
October 21, 2019 ยท Declared Dead ยท ๐ International Conference on Artificial Intelligence and Statistics
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Authors
Alexandra Gessner, Oindrila Kanjilal, Philipp Hennig
arXiv ID
1910.09328
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
33
Venue
International Conference on Artificial Intelligence and Statistics
Last Checked
3 months ago
Abstract
Integrals of linearly constrained multivariate Gaussian densities are a frequent problem in machine learning and statistics, arising in tasks like generalized linear models and Bayesian optimization. Yet they are notoriously hard to compute, and to further complicate matters, the numerical values of such integrals may be very small. We present an efficient black-box algorithm that exploits geometry for the estimation of integrals over a small, truncated Gaussian volume, and to simulate therefrom. Our algorithm uses the Holmes-Diaconis-Ross (HDR) method combined with an analytic version of elliptical slice sampling (ESS). Adapted to the linear setting, ESS allows for rejection-free sampling, because intersections of ellipses and domain boundaries have closed-form solutions. The key idea of HDR is to decompose the integral into easier-to-compute conditional probabilities by using a sequence of nested domains. Remarkably, it allows for direct computation of the logarithm of the integral value and thus enables the computation of extremely small probability masses. We demonstrate the effectiveness of our tailored combination of HDR and ESS on high-dimensional integrals and on entropy search for Bayesian optimization.
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