Sampling matrices from Harish-Chandra–Itzykson–Zuber densities with applications to Quantum inference and differential privacy

Jonathan Leake, Colin S. McSwiggen, Nisheeth K. Vishnoi
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引用次数: 12

Abstract

Given two Hermitian matrices Y and Λ, the Harish-Chandra–Itzykson–Zuber (HCIZ) distribution is given by the density eTr(U Λ U*Y) with respect to the Haar measure on the unitary group. Random unitary matrices distributed according to the HCIZ distribution are important in various settings in physics and random matrix theory, but the problem of sampling efficiently from this distribution has remained open. We present two algorithms to sample matrices from distributions that are close to the HCIZ distribution. The first produces samples that are ξ-close in total variation distance, and the number of arithmetic operations required depends on poly(log1/ξ). The second produces samples that are ξ-close in infinity divergence, but with a poly(1/ξ) dependence. Our results have the following applications: 1) an efficient algorithm to sample from complex versions of matrix Langevin distributions studied in statistics, 2) an efficient algorithm to sample from continuous maximum entropy distributions over unitary orbits, which in turn implies an efficient algorithm to sample a pure quantum state from the entropy-maximizing ensemble representing a given density matrix, and 3) an efficient algorithm for differentially private rank-k approximation that comes with improved utility bounds for k>1.
Harish-Chandra-Itzykson-Zuber密度的抽样矩阵及其在量子推理和微分隐私中的应用
给定两个厄米矩阵Y和Λ, Harish-Chandra-Itzykson-Zuber (HCIZ)分布由关于酉群上Haar测度的密度eTr(U Λ U*Y)给出。根据HCIZ分布分布的随机酉矩阵在物理和随机矩阵理论的各种设置中都很重要,但是从这种分布中有效采样的问题仍然没有解决。我们提出了两种从接近HCIZ分布的分布中采样矩阵的算法。第一种产生的样本在总变化距离上为ξ,所需的算术运算次数取决于poly(log1/ξ)。第二种方法产生的样本在无穷远发散中是ξ-接近的,但具有聚(1/ξ)依赖性。我们的结果有以下应用:1)从统计学中研究的矩阵朗格万分布的复杂版本中采样的有效算法;2)从单一轨道上的连续最大熵分布中采样的有效算法,这反过来意味着从代表给定密度矩阵的熵最大化集合中采样纯量子态的有效算法;3)差分私有秩-k近似的有效算法,该算法具有改进的k>1的效用界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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