Inference in matrix-variate Gaussian models has major applications for multi-output prediction and joint learning of row and column covariances from matrix-variate data. Here, we discuss an approach for efficient inference in such models that explicitly account for iid observation noise. Computational tractability can be retained by exploiting the Kronecker product between row and column covariance matrices. Using this framework, we show how to generalize the Graphical Lasso in order to learn a sparse inverse covariance between features while accounting for a low-rank confounding covariance between samples. We show practical utility on applications to biology, where we model covariances with more than 100,000 di-mensions. We find greater ac...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
We consider Gaussian multiresolution (MR) models in which coarser, hidden variables serve to captu...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inferring a graphical model or network from observational data from a large number of variables is a...
Contains fulltext : 91758.pdf (publisher's version ) (Open Access)Twenty-Fifth Ann...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
We consider Gaussian multiresolution (MR) models in which coarser, hidden variables serve to capture...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
We consider Gaussian multiresolution (MR) models in which coarser, hidden variables serve to captu...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inference in matrix-variate Gaussian models has major applications for multioutput prediction and jo...
Inferring a graphical model or network from observational data from a large number of variables is a...
Contains fulltext : 91758.pdf (publisher's version ) (Open Access)Twenty-Fifth Ann...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
We consider Gaussian multiresolution (MR) models in which coarser, hidden variables serve to capture...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
In this paper, we consider the problem of learning Gaussian multiresolution (MR) models in which dat...
We consider Gaussian multiresolution (MR) models in which coarser, hidden variables serve to captu...