We contribute to the discussion of the paper by Ni et al. (Stat Methods Appl, 2021. https://doi.org/10.1007/s10260-021-00572-8) by focusing on two aspects: (i) ordering of the variables for directed acyclic graphical models, and (ii) heterogeneity of the data in the presence of covariates. With regard to (i) we claim that an ordering should be assumed only when strongly reliable prior information is available; otherwise one should proceed with an unspecified ordering to guard against order misspecification. Alternatively, one can carry out Bayesian inference on the space of Markov equivalence classes or use a blend of observational and interventional data to alleviate the lack of identification. With regard to (ii) we complement the Au...
We de ne a new class of coloured graphical models, called regulatory graphs. These graphs have thei...
The implementation of the Bayesian paradigm to model comparison can be problematic. In particular, ...
Directed acyclic graphical (DAG) models are increasingly employed in the study of physical and biolo...
In the present contribution we provide a discussion of the paper on ‘‘Bayesian graphical models for...
In the present contribution we provide a discussion of the paper on “Bayesian graphical models for m...
The authors of the paper “Bayesian Graphical Models for Modern Biological Applications” have put for...
The aim of this chapter is twofold. In the first part we will provide a brief overview of the mathem...
The generalization of the classical multivariate t-distribution to the Dirichlet t-distribution prop...
"These papers represent two of the many different graphical modeling camps that have emerged from a ...
Graphical model learning and inference are often performed using Bayesian techniques. In particular,...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
The main topic of the doctoral thesis revolves around learning the structure of a graphical model fr...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
A statistical network is a collection of nodes representing random variables and a - c set of edges ...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
We de ne a new class of coloured graphical models, called regulatory graphs. These graphs have thei...
The implementation of the Bayesian paradigm to model comparison can be problematic. In particular, ...
Directed acyclic graphical (DAG) models are increasingly employed in the study of physical and biolo...
In the present contribution we provide a discussion of the paper on ‘‘Bayesian graphical models for...
In the present contribution we provide a discussion of the paper on “Bayesian graphical models for m...
The authors of the paper “Bayesian Graphical Models for Modern Biological Applications” have put for...
The aim of this chapter is twofold. In the first part we will provide a brief overview of the mathem...
The generalization of the classical multivariate t-distribution to the Dirichlet t-distribution prop...
"These papers represent two of the many different graphical modeling camps that have emerged from a ...
Graphical model learning and inference are often performed using Bayesian techniques. In particular,...
In this work, we propose approaches for the inference of graphical models in the Bayesian framework....
The main topic of the doctoral thesis revolves around learning the structure of a graphical model fr...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
A statistical network is a collection of nodes representing random variables and a - c set of edges ...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
We de ne a new class of coloured graphical models, called regulatory graphs. These graphs have thei...
The implementation of the Bayesian paradigm to model comparison can be problematic. In particular, ...
Directed acyclic graphical (DAG) models are increasingly employed in the study of physical and biolo...