\u3cp\u3eCredal networks are graph-based statistical models whose parameters take values in a set, instead of being sharply specified as in traditional statistical models (e.g., Bayesian networks). The computational complexity of inferences on such models depends on the irrelevance/independence concept adopted. In this paper, we study inferential complexity under the concepts of epistemic irrelevance and strong independence. We show that inferences under strong independence are NP-hard even in trees with binary variables except for a single ternary one. We prove that under epistemic irrelevance the polynomial-time complexity of inferences in credal trees is not likely to extend to more general models (e.g., singly connected topologies). The...
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
This paper presents a family of algorithms for approximate inference in credal net-works (that is, m...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
We summarise and provide pointers to recent advances in inference and identification for specific ty...
We replace strong independence in credal networks with the weaker notion of epistemic irrelevance. F...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
AbstractWe focus on credal nets, which are graphical models that generalise Bayesian nets to impreci...
A credal network under epistemic irrelevance is a generalised version of a Bayesian network that loo...
We study the computational complexity of finding maximum a posteriori configurations in Bayesian net...
We examine the inferential complexity of Bayesian networks specified through logical constructs. We ...
AbstractCredal networks relax the precise probability requirement of Bayesian networks, enabling a r...
\u3cp\u3eCredal networks generalize Bayesian networks by relaxing the requirement of precision of pr...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
\u3cp\u3eThis papers investigates the manipulation of statements of strong independence in probabili...
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
This paper presents a family of algorithms for approximate inference in credal net-works (that is, m...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
We summarise and provide pointers to recent advances in inference and identification for specific ty...
We replace strong independence in credal networks with the weaker notion of epistemic irrelevance. F...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
AbstractWe focus on credal nets, which are graphical models that generalise Bayesian nets to impreci...
A credal network under epistemic irrelevance is a generalised version of a Bayesian network that loo...
We study the computational complexity of finding maximum a posteriori configurations in Bayesian net...
We examine the inferential complexity of Bayesian networks specified through logical constructs. We ...
AbstractCredal networks relax the precise probability requirement of Bayesian networks, enabling a r...
\u3cp\u3eCredal networks generalize Bayesian networks by relaxing the requirement of precision of pr...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
\u3cp\u3eThis papers investigates the manipulation of statements of strong independence in probabili...
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
This paper presents a family of algorithms for approximate inference in credal net-works (that is, m...