On the distribution of the largest eigenvalue in principal components analysis



The Annals of Statistics
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On the distribution of the largest eigenvalue in principal components analysis

Iain M. Johnstone

Source: Ann. Statist. Volume 29, Number 2 (2001), 295-327.

Abstract

Let x(1) denote the square of the largest singular value of an n × p matrix X, all of whose entries are independent standard Gaussian variates. Equivalently, x(1) is the largest principal component variance of the covariance matrix $X'X$, or the largest eigenvalue of a p­variate Wishart distribution on n degrees of freedom with identity covariance.

Consider the limit of large p and n with $n/p = \gamma \ge 1$. When centered by $\mu_p = (\sqrt{n-1} + \sqrt{p})^2$ and scaled by $\sigma_p = (\sqrt{n-1} + \sqrt{p})(1/\sqrt{n-1} + 1/\sqrt{p}^{1/3}$, the distribution of x(1) approaches the Tracey-Widom law of order 1, which is defined in terms of the Painlevé II differential equation and can be numerically evaluated and tabulated in software. Simulations show the approximation to be informative for n and p as small as 5.

The limit is derived via a corresponding result for complex Wishart matrices using methods from random matrix theory. The result suggests that some aspects of large p multivariate distribution theory may be easier to apply in practice than their fixed p counterparts.

Primary Subjects: 62H25, 62F20
Secondary Subjects: 33C45, 60H25
Keywords: Karhunen–Loève transform; Laguerre ensemble; empirical orthogonal functions; largest eigenvalue; largest singular value; Laguerre polynomial; Wishart distribution; Plancherel–Rotach asymptotics; Painlevé equation; Tracy–Widom distribution; random matrix theory; Fredholm determinant; Liouville–Green method

Full-text: Open access

Links and Identifiers

Permanent link to this document: http://projecteuclid.org/euclid.aos/1009210544
Digital Object Identifier: doi:10.1214/aos/1009210544
Mathematical Reviews number (MathSciNet): MR1863961
Zentralblatt MATH identifier: 1016.62078

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