Chain graphs present a broad class of graphical models for description of conditional independence structures, including both Markov networks and Bayesian networks as special cases. In this paper, we propose a computationally feasible method for the structural learning of chain graphs based on the idea of decomposing the learning problem into a set of smaller scale problems on its decomposed subgraphs. The decomposition requires conditional independencies but does not require the separators to be complete subgraphs. Algorithms for both skeleton recovery and complex arrow orientation are presented. Simulations under a variety of settings demonstrate the competitive performance of our method, especially when the underlying graph is sparse
Probabilistic graphical models (PGMs) use graphs, either undirected, directed, or mixed, to represen...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
AbstractWhen it comes to learning graphical models from data, approaches based on conditional indepe...
Chain graphs present a broad class of graphical models for description of conditional independence s...
AbstractIn this paper, we propose that structural learning of a directed acyclic graph can be decomp...
In this paper, we propose that structural learning of a directed acyclic graph can be decomposed int...
Chain graphs (CGs) give a natural unifying point of view on Markov and Bayesian networks and enlarge...
The class of chain graphs (CGs) involving both undirected graphs (= Markov networks) and directed ac...
AbstractThe class of chain graphs (CGs) involving both undirected graphs (=Markov networks) and dire...
The paper gives a few arguments in favour of use of chain graphs for description of probabilistic co...
In this paper, we propose an approach for structural learning of independence graphs from multiple d...
Chain graphs combine directed and undirected graphs and their underlying mathematics combines proper...
In this paper, we consider how to recover the structure of a Bayesian network from a moral graph. We...
Chain Graph Models (CGs) are a widely used tool to describe the conditional independence relationshi...
Structural learning of a Bayesian network is often decomposed into problems related to its subgraphs...
Probabilistic graphical models (PGMs) use graphs, either undirected, directed, or mixed, to represen...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
AbstractWhen it comes to learning graphical models from data, approaches based on conditional indepe...
Chain graphs present a broad class of graphical models for description of conditional independence s...
AbstractIn this paper, we propose that structural learning of a directed acyclic graph can be decomp...
In this paper, we propose that structural learning of a directed acyclic graph can be decomposed int...
Chain graphs (CGs) give a natural unifying point of view on Markov and Bayesian networks and enlarge...
The class of chain graphs (CGs) involving both undirected graphs (= Markov networks) and directed ac...
AbstractThe class of chain graphs (CGs) involving both undirected graphs (=Markov networks) and dire...
The paper gives a few arguments in favour of use of chain graphs for description of probabilistic co...
In this paper, we propose an approach for structural learning of independence graphs from multiple d...
Chain graphs combine directed and undirected graphs and their underlying mathematics combines proper...
In this paper, we consider how to recover the structure of a Bayesian network from a moral graph. We...
Chain Graph Models (CGs) are a widely used tool to describe the conditional independence relationshi...
Structural learning of a Bayesian network is often decomposed into problems related to its subgraphs...
Probabilistic graphical models (PGMs) use graphs, either undirected, directed, or mixed, to represen...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
AbstractWhen it comes to learning graphical models from data, approaches based on conditional indepe...