On the Analytic Structure of Second-Order Non-Commutative Probability Spaces and Functions of Bounded Frechet Variation

IF 0.9 4区 数学 Q4 PHYSICS, MATHEMATICAL Random Matrices-Theory and Applications Pub Date : 2022-01-11 DOI:10.1142/s2010326322500447
Mario Díaz, J. Mingo
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引用次数: 2

Abstract

In this paper we propose a new approach to the central limit theorem (CLT), based on functions of bounded Féchet variation for the continuously differentiable linear statistics of random matrix ensembles which relies on: a weaker form of a large deviation principle for the operator norm; a Poincaré-type inequality for the linear statistics; and the existence of a second-order limit distribution. This approach frames into a single setting many known random matrix ensembles and, as a consequence, classical central limit theorems for linear statistics are recovered and new ones are established, e.g., the CLT for the continuously differentiable linear statistics of block Gaussian matrices. In addition, our main results contribute to the understanding of the analytical structure of second-order non-commutative probability spaces. On the one hand, they pinpoint the source of the unbounded nature of the bilinear functional associated to these spaces; on the other hand, they lead to a general archetype for the integral representation of the second-order Cauchy transform, G2. Furthermore, we establish that the covariance of resolvents converges to this transform and that the limiting covariance of analytic linear statistics can be expressed as a contour integral in G2.
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二阶非交换概率空间及有界Frechet变分函数的解析结构
本文提出了随机矩阵系连续可微线性统计的中心极限定理(CLT)的一种基于有界f变分函数的新方法,该方法依赖于:算子范数的一种弱形式的大偏差原理;线性统计量的poincar型不等式;二阶极限分布的存在性。这种方法将许多已知的随机矩阵集合框架成一个单一的集合,从而恢复了线性统计的经典中心极限定理,并建立了新的中心极限定理,例如,块高斯矩阵的连续可微线性统计的CLT。此外,我们的主要结果有助于理解二阶非交换概率空间的解析结构。一方面,他们指出了与这些空间相关的双线性函数的无界性质的来源;另一方面,它们引出了二阶柯西变换G2的积分表示的一般原型。进一步,我们证明了解析线性统计的协方差收敛于这个变换,并证明了解析线性统计的极限协方差可以表示为G2中的轮廓积分。
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来源期刊
Random Matrices-Theory and Applications
Random Matrices-Theory and Applications Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.90
自引率
11.10%
发文量
29
期刊介绍: Random Matrix Theory (RMT) has a long and rich history and has, especially in recent years, shown to have important applications in many diverse areas of mathematics, science, and engineering. The scope of RMT and its applications include the areas of classical analysis, probability theory, statistical analysis of big data, as well as connections to graph theory, number theory, representation theory, and many areas of mathematical physics. Applications of Random Matrix Theory continue to present themselves and new applications are welcome in this journal. Some examples are orthogonal polynomial theory, free probability, integrable systems, growth models, wireless communications, signal processing, numerical computing, complex networks, economics, statistical mechanics, and quantum theory. Special issues devoted to single topic of current interest will also be considered and published in this journal.
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