The computation of the inference corresponds to an NP-hard problem even for a single connected credal network. The novel concept of pseudo networks is proposed as an alternative to reduce the computational cost of probabilistic inference in credal networks and overcome the computational cost of existing methods. The method allows identifying the combination of intervals that optimizes the probability values of each state of the queried variable from the credal network. In the case of no evidence, the exact probability bounds of the query variable are calculated. When new evidence is inserted into the network, the outer and inner approximations of the query variable are computed by means of the marginalization of the joint probability distri...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
The goal of this contribution is to discuss local computation in credal networks — graphical models ...
Abstract The computation of the inference corresponds to an NP-hard problem even for a single connec...
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...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
AbstractThis paper proposes two new algorithms for inference in credal networks. These algorithms en...
A credal network is a graphical tool for representation and manipulation of uncertainty, where proba...
A credal network is a graph-theoretic model that represents imprecision in joint probability distrib...
AbstractA credal network is a graphical representation for a set of joint probability distributions....
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
\u3cp\u3eCredal networks generalize Bayesian networks by relaxing the requirement of precision of pr...
Credal networks relax the precise probability requirement of Bayesian networks, enabling a richer re...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
The goal of this contribution is to discuss local computation in credal networks — graphical models ...
Abstract The computation of the inference corresponds to an NP-hard problem even for a single connec...
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...
AbstractThis paper presents a complete theory of credal networks, structures that associate convex s...
AbstractThis paper proposes two new algorithms for inference in credal networks. These algorithms en...
A credal network is a graphical tool for representation and manipulation of uncertainty, where proba...
A credal network is a graph-theoretic model that represents imprecision in joint probability distrib...
AbstractA credal network is a graphical representation for a set of joint probability distributions....
Credal networks generalize Bayesian networks by relaxing the requirement of precision of probabiliti...
\u3cp\u3eCredal networks generalize Bayesian networks by relaxing the requirement of precision of pr...
Credal networks relax the precise probability requirement of Bayesian networks, enabling a richer re...
AbstractCredal networks generalize Bayesian networks by relaxing the requirement of precision of pro...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
The goal of this contribution is to discuss local computation in credal networks — graphical models ...