English

Statistical properties of determinantal point processes in high-dimensional Euclidean spaces

Statistical Mechanics 2009-11-13 v1

Abstract

The goal of this paper is to quantitatively describe some statistical properties of higher-dimensional determinantal point processes with a primary focus on the nearest-neighbor distribution functions. Toward this end, we express these functions as determinants of N×NN\times N matrices and then extrapolate to NN\to\infty. This formulation allows for a quick and accurate numerical evaluation of these quantities for point processes in Euclidean spaces of dimension dd. We also implement an algorithm due to Hough \emph{et. al.} \cite{hough2006dpa} for generating configurations of determinantal point processes in arbitrary Euclidean spaces, and we utilize this algorithm in conjunction with the aforementioned numerical results to characterize the statistical properties of what we call the Fermi-sphere point process for d=1d = 1 to 4. This homogeneous, isotropic determinantal point process, discussed also in a companion paper \cite{ToScZa08}, is the high-dimensional generalization of the distribution of eigenvalues on the unit circle of a random matrix from the circular unitary ensemble (CUE). In addition to the nearest-neighbor probability distribution, we are able to calculate Voronoi cells and nearest-neighbor extrema statistics for the Fermi-sphere point process and discuss these as the dimension dd is varied. The results in this paper accompany and complement analytical properties of higher-dimensional determinantal point processes developed in \cite{ToScZa08}.

Keywords

Cite

@article{arxiv.0810.4977,
  title  = {Statistical properties of determinantal point processes in high-dimensional Euclidean spaces},
  author = {A. Scardicchio and C. E. Zachary and S. Torquato},
  journal= {arXiv preprint arXiv:0810.4977},
  year   = {2009}
}

Comments

42 pages, 17 figures

R2 v1 2026-06-21T11:35:35.942Z