Exact inference on Bayesian networks has been developed through sophisticated algorithms. One of which, the variable elimination algorithm, identifies smaller components of the network, called factors, on which local operations are performed. In principle this algorithm can be used on any Bayesian network. However, to make the algorithm work in practice, it is crucial that an appropriate parameterization of the factors exist. Such a parameterization should ideally be closed under the local operations, but in general this is hard to achieve. In this thesis we investigate in detail the variable elimination algorithm, and we extend the class of Bayesian networks on which it can be applied. Bayesian networks are widely used within forensic stat...
We have developed software to improve screening and matching routine for victim identification based...
Abstract. The use of DNA evidence in problems of civil and criminal identification is becoming great...
We present a statistical model and methodology for making inferences about mutation rates from pater...
Exact inference on Bayesian networks has been developed through sophisticated algorithms. One of whi...
Bayesian networks (BNs) are commonly used when describing and analyzing relationships between intera...
Paternity dispute and criminal identification problems are examples of situations in which forensic...
Almost 30 years ago, Bayesian networks (BNs) were developed in the field of artificial intelligence ...
Population substructure refers to any population that does not randomly mate. In most species, this ...
Bayesian networks are gaining popularity as a graphical tool to communicate the complex probabilisti...
DNA evidence use in problems of civil and criminal identifycation is becoming greater and greater. T...
As a thorough aggregation of probability and graph theory, Bayesian networks currently enjoy widespr...
The use of DNA evidence in problems of civil and criminal identification is becoming greater and gr...
As a thorough aggregation of probability and graph theory, Bayesian networks currently enjoy widespr...
We describe a flexible computational toolkit, based on object-oriented Bayesian networks, that can b...
Solving forensic identification problems frequently requires complex probabilistic argument and comp...
We have developed software to improve screening and matching routine for victim identification based...
Abstract. The use of DNA evidence in problems of civil and criminal identification is becoming great...
We present a statistical model and methodology for making inferences about mutation rates from pater...
Exact inference on Bayesian networks has been developed through sophisticated algorithms. One of whi...
Bayesian networks (BNs) are commonly used when describing and analyzing relationships between intera...
Paternity dispute and criminal identification problems are examples of situations in which forensic...
Almost 30 years ago, Bayesian networks (BNs) were developed in the field of artificial intelligence ...
Population substructure refers to any population that does not randomly mate. In most species, this ...
Bayesian networks are gaining popularity as a graphical tool to communicate the complex probabilisti...
DNA evidence use in problems of civil and criminal identifycation is becoming greater and greater. T...
As a thorough aggregation of probability and graph theory, Bayesian networks currently enjoy widespr...
The use of DNA evidence in problems of civil and criminal identification is becoming greater and gr...
As a thorough aggregation of probability and graph theory, Bayesian networks currently enjoy widespr...
We describe a flexible computational toolkit, based on object-oriented Bayesian networks, that can b...
Solving forensic identification problems frequently requires complex probabilistic argument and comp...
We have developed software to improve screening and matching routine for victim identification based...
Abstract. The use of DNA evidence in problems of civil and criminal identification is becoming great...
We present a statistical model and methodology for making inferences about mutation rates from pater...