Exploiting Low Rank Covariance Structures for Computing High-Dimensional Normal and Student-t Probabilities

03/25/2020
by   Jian Cao, et al.
0

We present a preconditioned Monte Carlo method for computing high-dimensional multivariate normal and Student-t probabilities arising in spatial statistics. The approach combines a tile-low-rank representation of covariance matrices with a block-reordering scheme for efficient Quasi-Monte Carlo simulation. The tile-low-rank representation decomposes the high-dimensional problem into many diagonal-block-size problems and low-rank connections. The block-reordering scheme reorders between and within the diagonal blocks to reduce the impact of integration variables from right to left, thus improving the Monte Carlo convergence rate. Simulations up to dimension 65,536 suggest that the new method can improve the run time by an order of magnitude compared with the non-reordered tile-low-rank Quasi-Monte Carlo method and two orders of magnitude compared with the dense Quasi-Monte Carlo method. Our method also forms a strong substitute for the approximate conditioning methods as a more robust estimation with error guarantees. An application study to wind stochastic generators is provided to illustrate that the new computational method makes the maximum likelihood estimation feasible for high-dimensional skew-normal random fields.

READ FULL TEXT

page 18

page 26

research
02/15/2021

Efficient Bayesian reduced rank regression using Langevin Monte Carlo approach

The problem of Bayesian reduced rank regression is considered in this pa...
research
09/15/2023

A low-rank complexity reduction algorithm for the high-dimensional kinetic chemical master equation

It is increasingly realized that taking stochastic effects into account ...
research
07/14/2020

Designed Quadrature to Approximate Integrals in Maximum Simulated Likelihood Estimation

Maximum simulated likelihood estimation of mixed multinomial logit (MMNL...
research
10/06/2018

Low rank spatial econometric models

This article presents a re-structuring of spatial econometric models in ...
research
10/16/2019

Weighted Monte Carlo with least squares and randomized extended Kaczmarz for option pricing

We propose a methodology for computing single and multi-asset European o...
research
10/13/2021

Coherence of high-dimensional random matrices in a Gaussian case : application of the Chen-Stein method

This paper studies the τ-coherence of a (n x p)-observation matrix in a ...
research
09/04/2020

A Generalization of Spatial Monte Carlo Integration

Spatial Monte Carlo integration (SMCI) is an extension of standard Monte...

Please sign up or login with your details

Forgot password? Click here to reset