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首页> 外文期刊>Communications in Mathematical Physics >On Statistics of Bi-Orthogonal Eigenvectors in Real and Complex Ginibre Ensembles: Combining Partial Schur Decomposition with Supersymmetry
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On Statistics of Bi-Orthogonal Eigenvectors in Real and Complex Ginibre Ensembles: Combining Partial Schur Decomposition with Supersymmetry

机译:关于真实和复杂的金刚石合奏中双正交特征向量的统计:用超对称结合部分Schur分解

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摘要

We suggest a method of studying the joint probability density (JPD) of an eigenvalue and the associated 'non-orthogonality overlap factor' (also known as the 'eigenvalue condition number') of the left and right eigenvectors for non-selfadjoint Gaussian random matrices of size . First we derive the general finite N expression for the JPD of a real eigenvalue and the associated non-orthogonality factor in the real Ginibre ensemble, and then analyze its 'bulk' and 'edge' scaling limits. The ensuing distribution is maximally heavy-tailed, so that all integer moments beyond normalization are divergent. A similar calculation for a complex eigenvalue z and the associated non-orthogonality factor in the complex Ginibre ensemble is presented as well and yields a distribution with the finite first moment. Its 'bulk' scaling limit yields a distribution whose first moment reproduces the well-known result of Chalker and Mehlig (Phys Rev Lett 81(16):3367-3370, 1998), and we provide the 'edge' scaling distribution for this case as well. Our method involves evaluating the ensemble average of products and ratios of integer and half-integer powers of characteristic polynomials for Ginibre matrices, which we perform in the framework of a supersymmetry approach. Our paper complements recent studies by Bourgade and Dubach (The distribution of overlaps between eigenvectors of Ginibre matrices, 2018. arXiv:1801.01219).
机译:我们建议一种研究特征值的联合概率密度(JPD)和相关的“非正交性重叠因子”(也称为“非SelfaDjoint Gaussian随机的左特征向量的关节概率密度(JPD)(也称为”特征值条件号“)大小的矩阵。首先,我们派生了真正的特征值的JPD的一般有限N表达和真正的Ginibre合奏中的相关非正交因子,然后分析其“批量”和“边缘”缩放限制。随后的分布是最大重磅尾的,使得所有整数的矩阵超出正常化的瞬间是发散的。还提出了对复杂的特征值Z和复杂的Ginibre集合中的相关非正交性因子的类似计算,并产生了有限的第一矩的分布。其“批量”缩放限制会产生一个分布,其第一矩再现白垩和Mehlig的众所周知结果(Phy Rev Lett 81(16):3367-3370,1998),我们为这种情况提供了“边缘”缩放分布也是。我们的方法涉及评估用于Ginibre矩阵的整数和半整数的整数和半整数功率的集合平均值,我们在超对称方法的框架中执行。我们的论文补充了BOURGADE和DUBACH的最近研究(GINIBRE矩阵特征向量之间的分布,2018年。ARXIV:1801.01219)。

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