Fitting high-dimensional data involves a delicate tradeoff between faithful representation and the use of sparse models. Too often, sparsity assumptions on the fitted model are too restrictive to provide a faithful representation of the observed data. In this paper, we present a novel framework incorporating sparsity in different domains. We decompose the observed covariance matrix into a sparse Gaussian Markov model (with a sparse precision matrix) and a sparse independence model (with a sparse covariance matrix). Our framework incorporates sparse covariance and sparse precision estimation as special cases and thus introduces a richer class of high-dimensional models. We posit the observed data as generated from a linear combination of a s...
High-dimensional statistics is one of the most active research topics in modern statistics. It also ...
A matrix that has most of its elements equal to zero is called a sparse matrix. The zero elements in...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Fitting high-dimensional data involves a delicate tradeoff between faithful representation and the u...
Fitting high-dimensional data involves a delicate tradeoff between faithful representation and the u...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
This paper studies the sparsistency and rates of convergence for estimating sparse covariance and pr...
Covariance estimation for high-dimensional datasets is a fundamental problem in machine learning, an...
In this paper we consider the task of esti-mating the non-zero pattern of the sparse in-verse covari...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
We propose maximum likelihood estimation for learning Gaussian graphical models with a Gaussian (ℓ[2...
This thesis develops methodology and asymptotic analysis for sparse estimators of the covariance mat...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
One of the fundamental tasks in science is to find explainable relationships between observed pheno...
High-dimensional statistics is one of the most active research topics in modern statistics. It also ...
A matrix that has most of its elements equal to zero is called a sparse matrix. The zero elements in...
Many modern problems in science and other areas involve extraction of useful information from so-cal...
Fitting high-dimensional data involves a delicate tradeoff between faithful representation and the u...
Fitting high-dimensional data involves a delicate tradeoff between faithful representation and the u...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
This paper studies the sparsistency and rates of convergence for estimating sparse covariance and pr...
Covariance estimation for high-dimensional datasets is a fundamental problem in machine learning, an...
In this paper we consider the task of esti-mating the non-zero pattern of the sparse in-verse covari...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
We propose maximum likelihood estimation for learning Gaussian graphical models with a Gaussian (ℓ[2...
This thesis develops methodology and asymptotic analysis for sparse estimators of the covariance mat...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
One of the fundamental tasks in science is to find explainable relationships between observed pheno...
High-dimensional statistics is one of the most active research topics in modern statistics. It also ...
A matrix that has most of its elements equal to zero is called a sparse matrix. The zero elements in...
Many modern problems in science and other areas involve extraction of useful information from so-cal...