AbstractWe present an extension of Bayesian networks to probability intervals, aiming at a more realistic and flexible modeling of applications with uncertain and imprecise knowledge. Within the logical framework of causal programs we provide a model-theoretic foundation for a formal treatment of consistency and of logical consequences. A set of local inference rules is developed, which is proved to be sound and—in the absence of loops—also to be complete; i.e., tightest probability bounds can be computed incrementally by bounds propagation. These inference rules can be evaluated very efficiently in linear time and space. An important feature of this approach is that sensitivity analyses can be carried out systematically, unveiling portions...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...
AbstractWe present an extension of Bayesian networks to probability intervals, aiming at a more real...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
Given the complexity of the domains for which we would like to use computers as reasoning engines, ...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...
AbstractWe present an extension of Bayesian networks to probability intervals, aiming at a more real...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
Given the complexity of the domains for which we would like to use computers as reasoning engines, ...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
A Bayesian network is a concise representation of a joint probability distribution, which can be use...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
This paper investigates a representation language with flexibility inspired by probabilistic logic a...
Bayesian networks (BNs) have proven to be a modeling framework capable of capturing uncertain knowle...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...