Motivated by analysis of gene expression data measured in different tissues or disease states, we consider joint estimation of multiple precision matrices to effectively utilize the partially shared graphical structures of the corresponding graphs. The procedure is based on a weighted constrained l∞/l1 minimization, which can be effectively implemented by a second-order cone programming. Compared to separate estimation methods, the proposed joint estimation method leads to estimators converging to the true precision matrices faster. Under certain regularity conditions, the proposed procedure leads to an exact graph structure recovery with a probability tending to 1. Simulation studies show that the proposed joint estimation methods outperfo...
Bipartite network inference is a ubiquitous problem across disciplines. One important example in the...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
We develop a method to recover a gene network's structure from co-expression data, measured in terms...
Estimation of inverse covariance matrices, known as precision matrices, is important in various area...
Estimation of inverse covariance matrices, known as precision matrices, is important in various area...
© 2020, Institute of Mathematical Statistics. All rights reserved. We consider the problem of jointl...
The thesis considers the estimation of sparse precision matrices in the highdimensional setting. Fir...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Abstract Covariance matrix and its inverse, known as the precision matrix, have many applications i...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
AbstractMotivated by analysis of gene expression data measured over different tissues or over time, ...
In this paper, we consider the problem of estimating multiple Gaussian Graphical Models from high-di...
In the study of transcriptional data for different groups (e.g. cancer types) it\u27s reasonable to ...
AbstractMotivated by analysis of gene expression data measured over different tissues or over time, ...
Bipartite network inference is a ubiquitous problem across disciplines. One important example in the...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
We develop a method to recover a gene network's structure from co-expression data, measured in terms...
Estimation of inverse covariance matrices, known as precision matrices, is important in various area...
Estimation of inverse covariance matrices, known as precision matrices, is important in various area...
© 2020, Institute of Mathematical Statistics. All rights reserved. We consider the problem of jointl...
The thesis considers the estimation of sparse precision matrices in the highdimensional setting. Fir...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Abstract Covariance matrix and its inverse, known as the precision matrix, have many applications i...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
AbstractMotivated by analysis of gene expression data measured over different tissues or over time, ...
In this paper, we consider the problem of estimating multiple Gaussian Graphical Models from high-di...
In the study of transcriptional data for different groups (e.g. cancer types) it\u27s reasonable to ...
AbstractMotivated by analysis of gene expression data measured over different tissues or over time, ...
Bipartite network inference is a ubiquitous problem across disciplines. One important example in the...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
We develop a method to recover a gene network's structure from co-expression data, measured in terms...