2013
DOI: 10.1142/s2010326313500056
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The Spectrum of Random Kernel Matrices: Universality Results for Rough and Varying Kernels

Abstract: Abstract. We consider random matrices whose entries are f (X T i X j ) or f ( X i − X j 2 ) for iid vectors X i ∈ R p with normalized distribution. Assuming that f is sufficiently smooth and the distribution of X i 's is sufficiently nice, El Karoui [17] showed that the spectral distributions of these matrices behave as if f is linear in the Marčhenko-Pastur limit. When X i 's are Gaussian vectors, variants of this phenomenon were recently proved for varying kernels, i.e. when f may depend on p, by Cheng-Singe… Show more

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Cited by 28 publications
(18 citation statements)
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“…In particular, the leave-one-out method can be used to derive a recursion for the resolvent, as first shown for this type of matrices in Cheng and Singer (2013), and the moments method was first used in Fan and Montanari (2019) (both of these papers consider symmetric random matrices, but these techniques extend to the asymmetric case). Further results on kernel random matrices can be found in Do and Vu (2013), Louart, Liao and Couillet (2018) and Pennington and Worah (2018).…”
Section: Proportional Scalingmentioning
confidence: 94%
“…In particular, the leave-one-out method can be used to derive a recursion for the resolvent, as first shown for this type of matrices in Cheng and Singer (2013), and the moments method was first used in Fan and Montanari (2019) (both of these papers consider symmetric random matrices, but these techniques extend to the asymmetric case). Further results on kernel random matrices can be found in Do and Vu (2013), Louart, Liao and Couillet (2018) and Pennington and Worah (2018).…”
Section: Proportional Scalingmentioning
confidence: 94%
“…This result was generalized by Do and Vu to the setting of non-Gaussian entries x ij in [23]. Before stating our main results, let us discuss some basic properties of this limit measure: For a linear kernel function k(x) = ax, µ a,ν,γ is a translation and rescaling of the Marcenko-Pastur law.…”
Section: Introductionmentioning
confidence: 98%
“…In particular, the leave-one-out method can be used to derive a recursion for the resolvent, as first shown for this type of matrices in [CS13], and the moments method was first used in [FM19] (both of these papers consider symmetric random matrices, but these techniques extend to the asymmetric case). Further results on kernel random matrices can be found in [DV13,LLC18] and [PW18].…”
Section: Proportional Scalingmentioning
confidence: 99%