We argue that a Bayesian will usually need to specify a joint prior density of the conditional probabilities of Causal Bayesian network (CBN). We show that in order to do this, under very mild conditions it will be necessary to demand that this joint prior density exhibits the properties of local and global independence. To make the connection between prior independence and causality, it is first necessary to strengthen slightly the assumptions of factorization invariance under manipulation which induces randomized intervention. We introduce the hypercausal BN (HCBN) that asserts a set of factorizations of densities which are invariant to a class of "do" operations larger than those considered by Pearl. We show that if a BN is assumed to be...
AbstractThis paper explores the role of independence of causal influence (ICI) in Bayesian network i...
Computing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime approxim...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...
In this paper we define the multicausal essential graph. Such graphical model demands further proper...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
It is well known that conditional independence can be used to factorize a joint probability into a m...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
A new method is proposed for exploiting causal independencies in exact Bayesian network inference. A...
A constructive definition of intercausal independence is given. It is well known that conditional in...
The theory of causal independence is frequently used to facilitate the assessment of the probabilist...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
This paper explores the role of independence of causal influence (ICI) in Bayesian network inference...
AbstractIndependence of causal influence (ICI) offer a high level starting point for the design of B...
AbstractThis paper explores the role of independence of causal influence (ICI) in Bayesian network i...
Computing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime approxim...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...
In this paper we define the multicausal essential graph. Such graphical model demands further proper...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
It is well known that conditional independence can be used to factorize a joint probability into a m...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
Three kinds of independence are of interest in the context of Bayesian networks, namely conditional ...
A new method is proposed for exploiting causal independencies in exact Bayesian network inference. A...
A constructive definition of intercausal independence is given. It is well known that conditional in...
The theory of causal independence is frequently used to facilitate the assessment of the probabilist...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
This paper explores the role of independence of causal influence (ICI) in Bayesian network inference...
AbstractIndependence of causal influence (ICI) offer a high level starting point for the design of B...
AbstractThis paper explores the role of independence of causal influence (ICI) in Bayesian network i...
Computing marginal probabilities in Bayes networks is a hard problem. Deterministic anytime approxim...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...