The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correlation coefficients between the columns of the random matrix, is an important quantity for a wide range of applications including high-dimensional statistics and signal processing. Inspired by these applications, this paper studies the limiting laws of the coherence of n×p random matrices for a full range of the dimension p with a special focus on the ultra high-dimensional setting. Assuming the columns of the random matrix are independent random vectors with a common spherical distribution, we give a complete characterization of the behavior of the limiting distributions of the coherence. More specifically, the limiting distributions of the c...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
5 pag. + 7 pag. Suppl. Material. 3 FiguresInternational audienceWe study the statistics of the condi...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
AbstractThe coherence of a random matrix, which is defined to be the largest magnitude of the Pearso...
Testing covariance structure is of significant interest in many areas of statistical analysis and co...
Cette thèse concerne l'étude de la τ -cohérence d'une matrice d'observations aléatoires de grande ta...
This paper studies the τ-coherence of a (n × p)-observation matrix in a Gaussian framework. The τ-co...
This thesis focuses on the study of the τ -coherence of an high-dimensional (n x p)-observation matr...
This thesis focuses on the study of the τ -coherence of an high-dimensional (n x p)-observation matr...
Let x(1),...,x(n) be a random sample from a p-dimensional population distribution, where p = p(n) ->...
This thesis focuses on the study of the $\tau$-coherence of an high-dimensional $(n \times p)$-obser...
This thesis focuses on the study of the $\tau$-coherence of an high-dimensional $(n \times p)$-obser...
In many applications of compressed sensing, coherence of the matrix A plays an important role in the...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
5 pag. + 7 pag. Suppl. Material. 3 FiguresInternational audienceWe study the statistics of the condi...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
The coherence of a random matrix, which is defined to be the largest magnitude of the Pearson correl...
AbstractThe coherence of a random matrix, which is defined to be the largest magnitude of the Pearso...
Testing covariance structure is of significant interest in many areas of statistical analysis and co...
Cette thèse concerne l'étude de la τ -cohérence d'une matrice d'observations aléatoires de grande ta...
This paper studies the τ-coherence of a (n × p)-observation matrix in a Gaussian framework. The τ-co...
This thesis focuses on the study of the τ -coherence of an high-dimensional (n x p)-observation matr...
This thesis focuses on the study of the τ -coherence of an high-dimensional (n x p)-observation matr...
Let x(1),...,x(n) be a random sample from a p-dimensional population distribution, where p = p(n) ->...
This thesis focuses on the study of the $\tau$-coherence of an high-dimensional $(n \times p)$-obser...
This thesis focuses on the study of the $\tau$-coherence of an high-dimensional $(n \times p)$-obser...
In many applications of compressed sensing, coherence of the matrix A plays an important role in the...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
Dimension reduction is the process of embedding high-dimensional data into a lower dimensional space...
5 pag. + 7 pag. Suppl. Material. 3 FiguresInternational audienceWe study the statistics of the condi...