We consider random matrices whose entries are obtained by applying a (nonlinear) kernel function to the pairwise inner products between $n$ independent data vectors drawn uniformly from the unit sphere in $\mathbb{R}^d$. Our study of this model is motivated by problems in machine learning, statistics, and signal processing, where such inner-product kernel random matrices and their spectral properties play important roles. Under mild conditions on the kernel function, we establish the weak-limit of the empirical spectral distribution of these matrices when $d, n \to \infty$ such that $n / d^\ell \to \kappa \in (0, \infty)$, for some fixed $\ell \in \mathbb{N}$ and $\kappa \in \mathbb{R}$. This generalizes an earlier result of Cheng and Singe...
Akemann, Ipsen and Kieburg recently showed that the squared singular values of products of M rectang...
AbstractWe introduce a random matrix model where the entries are dependent across both rows and colu...
AbstractThe existence of limiting spectral distribution (LSD) of the product of two random matrices ...
We consider nxn matrices whose (i, j)th entry is f(X-i(T) X-j), where X-1,..., X-n are i.i.d. standa...
We study the spectra of p×p random matrices K with off-diagonal (i, j) entry equal to n−1/2k(XTi Xj/...
We consider n-by-n matrices whose (i, j)th entry is f(XTi Xj), where X1,..., Xn are i.i.d. standard ...
Scaling level-spacing distribution functions in the ``bulk of the spectrum'' in random matr...
Akemann G, Burda Z, Kieburg M. Universality of local spectral statistics of products of random matri...
For fixed l≥0 and m≥1, let Xn0, Xn1,..., Xnl be independent random n × n matrices with i...
Solutions to basic non-linear limit spectral equation for matrices RTR of increasing di-mension are ...
This paper focuses on the spectral distribution of kernel matrices related to radial basis functions...
Götze F, Tikhomirov AN. Limit theorems for spectra of random matrices with martingale structure. THE...
Kernel methods are an extremely popular set of techniques used for many important machine learning a...
Kösters H, Tikhomirov A. LIMITING SPECTRAL DISTRIBUTIONS OF SUMS OF PRODUCTS OF NON-HERMITIAN RANDOM...
Consider the random matrix model $A^{1/2} UBU^* A^{1/2},$ where $A$ and $B$ are two $N \times N$ det...
Akemann, Ipsen and Kieburg recently showed that the squared singular values of products of M rectang...
AbstractWe introduce a random matrix model where the entries are dependent across both rows and colu...
AbstractThe existence of limiting spectral distribution (LSD) of the product of two random matrices ...
We consider nxn matrices whose (i, j)th entry is f(X-i(T) X-j), where X-1,..., X-n are i.i.d. standa...
We study the spectra of p×p random matrices K with off-diagonal (i, j) entry equal to n−1/2k(XTi Xj/...
We consider n-by-n matrices whose (i, j)th entry is f(XTi Xj), where X1,..., Xn are i.i.d. standard ...
Scaling level-spacing distribution functions in the ``bulk of the spectrum'' in random matr...
Akemann G, Burda Z, Kieburg M. Universality of local spectral statistics of products of random matri...
For fixed l≥0 and m≥1, let Xn0, Xn1,..., Xnl be independent random n × n matrices with i...
Solutions to basic non-linear limit spectral equation for matrices RTR of increasing di-mension are ...
This paper focuses on the spectral distribution of kernel matrices related to radial basis functions...
Götze F, Tikhomirov AN. Limit theorems for spectra of random matrices with martingale structure. THE...
Kernel methods are an extremely popular set of techniques used for many important machine learning a...
Kösters H, Tikhomirov A. LIMITING SPECTRAL DISTRIBUTIONS OF SUMS OF PRODUCTS OF NON-HERMITIAN RANDOM...
Consider the random matrix model $A^{1/2} UBU^* A^{1/2},$ where $A$ and $B$ are two $N \times N$ det...
Akemann, Ipsen and Kieburg recently showed that the squared singular values of products of M rectang...
AbstractWe introduce a random matrix model where the entries are dependent across both rows and colu...
AbstractThe existence of limiting spectral distribution (LSD) of the product of two random matrices ...