4.4 Article

Superposition of random plane waves in high spatial dimensions: Random matrix approach to landscape complexity

Journal

JOURNAL OF MATHEMATICAL PHYSICS
Volume 63, Issue 9, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0086919

Keywords

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Funding

  1. EPSRC
  2. EPSRC Centre for Doctoral Training in Cross-Disciplinary Approaches to Non-Equilibrium Systems
  3. [EP/V002473/1]
  4. [EP/L015854/1]

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This paper investigates a high-dimensional random landscape model obtained by superimposing random plane waves and subject to a uniform parabolic confinement. By studying the spectral properties of the characteristic matrix, the annealed complexity of the landscape is computed.
Motivated by current interest in understanding statistical properties of random landscapes in high-dimensional spaces, we consider a model of the landscape in RN obtained by superimposing M > N plane waves of random wavevectors and amplitudes and further restricted by a uniform parabolic confinement in all directions. For this landscape, we show how to compute the annealed complexity, controlling the asymptotic growth rate of the mean number of stationary points as N -> infinity at fixed ratio alpha = M/N > 1. The framework of this computation requires us to study spectral properties of N x N matrices W = KTKT, where T is a diagonal matrix with M mean zero independent and identically distributed (i.i.d.) real normally distributed entries, and all MN entries of K are also i.i.d. real normal random variables. We suggest to call the latter Gaussian Marchenko-Pastur ensemble as such matrices appeared in the seminal 1967 paper by those authors. We compute the associated mean spectral density and evaluate some moments and correlation functions involving products of characteristic polynomials for such matrices. (C) 2022 Author(s).

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