Reconstructing a gene network from high-throughput molecular data is an important but challenging task, as the number of parameters to estimate easily is much larger than the sample size. A conventional remedy is to regularize or penalize the model likelihood. In network models, this is often done locally in the neighborhood of each node or gene. However, estimation of the many regularization parameters is often difficult and can result in large statistical uncertainties. In this paper we propose to combine local regularization with global shrinkage of the regularization parameters to borrow strength between genes and improve inference. We employ a simple Bayesian model with nonsparse, conjugate priors to facilitate the use of fast variatio...
Reconstructing gene regulatory networks (GRNs) from expression data is a challenging task that has b...
The aim of this thesis is to provide a framework for the estimation and analysis of transcription ne...
All the genes of an organism's genome build up an intricate network of connections between them. Man...
Reconstructing a gene network from high-throughput molecular data is an important but challenging ta...
Reconstructing a gene network from high-throughput molecular data is an important but challenging ta...
BACKGROUND: Reconstructing gene regulatory networks (GRNs) from expression data is a challenging tas...
Different challenging issues have emerged in recent years regarding the analysis of high dimensional...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
With advancements in genomic technologies, it is common to have two high-dimensional datasets, each ...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
MOTIVATION: One of the main goals in systems biology is to learn molecular regulatory networks from ...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
To relax the homogeneity assumption of classical dynamic Bayesian networks (DBNs), various recent st...
Network inference deals with the reconstruction of biological networks from experimental data. A var...
Reconstructing gene regulatory networks (GRNs) from expression data is a challenging task that has b...
The aim of this thesis is to provide a framework for the estimation and analysis of transcription ne...
All the genes of an organism's genome build up an intricate network of connections between them. Man...
Reconstructing a gene network from high-throughput molecular data is an important but challenging ta...
Reconstructing a gene network from high-throughput molecular data is an important but challenging ta...
BACKGROUND: Reconstructing gene regulatory networks (GRNs) from expression data is a challenging tas...
Different challenging issues have emerged in recent years regarding the analysis of high dimensional...
Regulatory network reconstruction is an ongoing field of research that biologists have been pressing...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
With advancements in genomic technologies, it is common to have two high-dimensional datasets, each ...
Reconstruction of a high-dimensional network may benefit substantially from the inclusion of prior k...
MOTIVATION: One of the main goals in systems biology is to learn molecular regulatory networks from ...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
To relax the homogeneity assumption of classical dynamic Bayesian networks (DBNs), various recent st...
Network inference deals with the reconstruction of biological networks from experimental data. A var...
Reconstructing gene regulatory networks (GRNs) from expression data is a challenging task that has b...
The aim of this thesis is to provide a framework for the estimation and analysis of transcription ne...
All the genes of an organism's genome build up an intricate network of connections between them. Man...