AbstractCredal networks relax the precise probability requirement of Bayesian networks, enabling a richer representation of uncertainty in the form of closed convex sets of probability measures. The increase in expressiveness comes at the expense of higher computational costs. In this paper, we present a new variable elimination algorithm for exactly computing posterior inferences in extensively specified credal networks, which is empirically shown to outperform a state-of-the-art algorithm. The algorithm is then turned into a provably good approximation scheme, that is, a procedure that for any input is guaranteed to return a solution not worse than the optimum by a given factor. Remarkably, we show that when the networks have bounded tree...
This paper presents a family of algorithms for approximate inference in credal net-works (that is, m...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
Credal networks relax the precise probability requirement of Bayesian networks, enabling a richer re...
\u3cp\u3eCredal networks relax the precise probability requirement of Bayesian networks, enabling a ...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
\u3cp\u3eCredal networks generalize Bayesian networks by relaxing the requirement of precision of pr...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
AbstractA credal network is a graphical representation for a set of joint probability distributions....
AbstractThis paper proposes two new algorithms for inference in credal networks. These algorithms en...
Abstract Credal networks enhance robustness and modelling power of Bayesian networks by allowing for...
This paper proposes two new algorithms for inference in credal networks. These algorithms enable pr...
This paper presents a family of algorithms for approximate inference in credal net-works (that is, m...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...
Credal networks relax the precise probability requirement of Bayesian networks, enabling a richer re...
\u3cp\u3eCredal networks relax the precise probability requirement of Bayesian networks, enabling a ...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
\u3cp\u3eCredal networks generalize Bayesian networks by relaxing the requirement of precision of pr...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
AbstractA credal network is a graphical representation for a set of joint probability distributions....
AbstractThis paper proposes two new algorithms for inference in credal networks. These algorithms en...
Abstract Credal networks enhance robustness and modelling power of Bayesian networks by allowing for...
This paper proposes two new algorithms for inference in credal networks. These algorithms enable pr...
This paper presents a family of algorithms for approximate inference in credal net-works (that is, m...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
Credal networks are graph-based statistical models whose parameters take values in a set, instead of...