© Institute of Mathematical Statistics, 2014. Graphical models are widely used to make inferences concerning interplay in multivariate systems. In many applications, data are collected from multiple related but nonidentical units whose underlying networks may differ but are likely to share features. Here we present a hierarchical Bayesian formulation for joint estimation of multiple networks in this nonidentically distributed setting. The approach is general: given a suitable class of graphical models, it uses an exchangeability assumption on networks to provide a corresponding joint formulation. Motivated by emerging experimental de- signs in molecular biology, we focus on time-course data with interventions, using dynamic Bayesian network...
*To whom correspondence should be addressed. Motivation: Markov networks are undirected graphical mo...
Recent years have seen much interest in the study of systems characterized by multiple interacting c...
Markov networks are undirected graphical models that are widely used to infer relations between gene...
Several methods have recently been developed for joint structure learning of multiple (related) grap...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Several methods have recently been devel-oped for joint structure learning of multi-ple (related) gr...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
In this paper, we develop a graphical modeling framework for the inference of networks across multip...
In this article, we propose a Bayesian approach to inference on multiple Gaussian graphical models. ...
Graphical modeling represents an established methodology for identifying complex dependencies in bio...
In this paper, we propose a Bayesian approach to inference on multiple Gaussian graphical models. Sp...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
<div><p>Inferring regulatory networks from experimental data via probabilistic graphical models is a...
Inferring regulatory networks from experimental data via probabilistic graphical models is a popular...
Beretta, S., Castelli, M., Gonçalves, I., Merelli, I., & Ramazzotti, D. (2016). Combining Bayesian a...
*To whom correspondence should be addressed. Motivation: Markov networks are undirected graphical mo...
Recent years have seen much interest in the study of systems characterized by multiple interacting c...
Markov networks are undirected graphical models that are widely used to infer relations between gene...
Several methods have recently been developed for joint structure learning of multiple (related) grap...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Several methods have recently been devel-oped for joint structure learning of multi-ple (related) gr...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
In this paper, we develop a graphical modeling framework for the inference of networks across multip...
In this article, we propose a Bayesian approach to inference on multiple Gaussian graphical models. ...
Graphical modeling represents an established methodology for identifying complex dependencies in bio...
In this paper, we propose a Bayesian approach to inference on multiple Gaussian graphical models. Sp...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
<div><p>Inferring regulatory networks from experimental data via probabilistic graphical models is a...
Inferring regulatory networks from experimental data via probabilistic graphical models is a popular...
Beretta, S., Castelli, M., Gonçalves, I., Merelli, I., & Ramazzotti, D. (2016). Combining Bayesian a...
*To whom correspondence should be addressed. Motivation: Markov networks are undirected graphical mo...
Recent years have seen much interest in the study of systems characterized by multiple interacting c...
Markov networks are undirected graphical models that are widely used to infer relations between gene...