超平面截断多元正态分布的快速模拟

Yulai Cong, Bo Chen, Mingyuan Zhou
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引用次数: 36

摘要

本文介绍了一种快速且易于实现的多变量正态分布的仿真算法,并将其推广到多变量正态分布的仿真中,该多变量正态分布的协方差(精度)矩阵可以分解为正定矩阵减去(加上)低秩对称矩阵。算例结果验证了所提仿真算法的正确性和有效性。
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Fast Simulation of Hyperplane-Truncated Multivariate Normal Distributions
We introduce a fast and easy-to-implement simulation algorithm for a multivariate normal distribution truncated on the intersection of a set of hyperplanes, and further generalize it to efficiently simulate random variables from a multivariate normal distribution whose covariance (precision) matrix can be decomposed as a positive-definite matrix minus (plus) a low-rank symmetric matrix. Example results illustrate the correctness and efficiency of the proposed simulation algorithms.
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