AbstractExisting data sets of cases can significantly reduce the knowledge engineering effort required to parameterize Bayesian networks. Unfortunately, when a data set is small, many conditioning cases are represented by too few or no data records and they do not offer sufficient basis for learning conditional probability distributions. We propose a method that uses Noisy-OR gates to reduce the data requirements in learning conditional probabilities. We test our method on Hepar II, a model for diagnosis of liver disorders, whose parameters are extracted from a real, small set of patient records. Diagnostic accuracy of the multiple-disorder model enhanced with the Noisy-OR parameters was 6.7% better than the accuracy of the plain multiple-d...
While most knowledge engineers believe that the quality of\ud results obtained by means of Bayesian ...
As a compact graphical framework for representation of multivariate probabilitydistributions, Bayesi...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...
One problem faced in knowledge engineering for Bayesian networks (BNs) is the exponential growth of ...
One problem faced in knowledge engineering for Bayesian networks (BNs) is the exponential growth of ...
The creation of Bayesian networks often requires the specification of a large number of parameters, ...
Bayesian networks, which provide a compact graphical way to express complex probabilistic relationsh...
Abstract: Parameter learning from data in Bayesian networks is a straightforward task. The average n...
Many real applications of Bayesian Networks (bns) concern problems in which several observations are...
Many real applications of Bayesian networks (BN’s) concern problems in which several observations a...
Abstract. In Bayesian networks, prior knowledge has been used in the form of causal independencies b...
Abstract. Lack of relevant data is a major challenge for learning Bayesi-an networks (BNs) in real-w...
Probabilistic reasoning, among methodologies used within the domain of artificial intelligence, is r...
This paper addresses the estimation of parameters of a Bayesian network from incomplete data. The ta...
In this thesis, we learn the structure of a hybrid Bayesian network (mixed continuous and discrete) ...
While most knowledge engineers believe that the quality of\ud results obtained by means of Bayesian ...
As a compact graphical framework for representation of multivariate probabilitydistributions, Bayesi...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...
One problem faced in knowledge engineering for Bayesian networks (BNs) is the exponential growth of ...
One problem faced in knowledge engineering for Bayesian networks (BNs) is the exponential growth of ...
The creation of Bayesian networks often requires the specification of a large number of parameters, ...
Bayesian networks, which provide a compact graphical way to express complex probabilistic relationsh...
Abstract: Parameter learning from data in Bayesian networks is a straightforward task. The average n...
Many real applications of Bayesian Networks (bns) concern problems in which several observations are...
Many real applications of Bayesian networks (BN’s) concern problems in which several observations a...
Abstract. In Bayesian networks, prior knowledge has been used in the form of causal independencies b...
Abstract. Lack of relevant data is a major challenge for learning Bayesi-an networks (BNs) in real-w...
Probabilistic reasoning, among methodologies used within the domain of artificial intelligence, is r...
This paper addresses the estimation of parameters of a Bayesian network from incomplete data. The ta...
In this thesis, we learn the structure of a hybrid Bayesian network (mixed continuous and discrete) ...
While most knowledge engineers believe that the quality of\ud results obtained by means of Bayesian ...
As a compact graphical framework for representation of multivariate probabilitydistributions, Bayesi...
AbstractWe consider the problem of learning the parameters of a Bayesian network from data, while ta...