In this paper we report an evolutionary approach to learning Bayesian networks from data. We explain reasons, which advocate such a non-deterministic approach. We analyze weaknesses of previous works and come to conclusion that we should operate in the search space native for the problem i.e. in the space of directed acyclic graphs instead of standard space of binary strings. This requires adaptation of evolutionary methodology into very specific needs. We propose quite new data representation and implementation of generalized genetic operators and then we present an efficient algorithm capable of learning complex networks without additional assumptions. We discuss results obtained with this algorithm. The approach presented in this paper c...
Design of evolutionary methods applied to the learning of Bayesian network structures 1
This paper demonstrates how genetic algorithms can be used to discover the structure of a Bayesian n...
Chapter 11International audienceBayesian networks are graphical statistical models that represent in...
International audienceThis paper describes two approaches based on evolutionary algorithms for deter...
In the last few years Bayesian networks have become a popular way of modelling probabilistic relatio...
Abstract. Bayesian networks are stochastic models, widely adopted to encode knowledge in several fie...
Bayesian networks are stochastic models, widely adopted to encode knowledge in several fields. One o...
SUMMARY A new structure learning approach for Bayesian networks (BNs) based on dual genetic algorith...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
In this thesis, we propose a study of the problem of learning the structure of a bayesian network th...
Abstract. We present the Acyclic Bayesian Net Generator, a new approach to learn the structure of a ...
This paper describes a novel data mining approach that employs evolutionary programming to discover ...
Combining classifier methods have shown their effective-ness in a number of applications. Nonetheles...
Bayesian networks are regarded as one of the essential tools to analyze causal relationship between ...
Bayesian networks are graphical statistical models that represent inference between data. For their ...
Design of evolutionary methods applied to the learning of Bayesian network structures 1
This paper demonstrates how genetic algorithms can be used to discover the structure of a Bayesian n...
Chapter 11International audienceBayesian networks are graphical statistical models that represent in...
International audienceThis paper describes two approaches based on evolutionary algorithms for deter...
In the last few years Bayesian networks have become a popular way of modelling probabilistic relatio...
Abstract. Bayesian networks are stochastic models, widely adopted to encode knowledge in several fie...
Bayesian networks are stochastic models, widely adopted to encode knowledge in several fields. One o...
SUMMARY A new structure learning approach for Bayesian networks (BNs) based on dual genetic algorith...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
In this thesis, we propose a study of the problem of learning the structure of a bayesian network th...
Abstract. We present the Acyclic Bayesian Net Generator, a new approach to learn the structure of a ...
This paper describes a novel data mining approach that employs evolutionary programming to discover ...
Combining classifier methods have shown their effective-ness in a number of applications. Nonetheles...
Bayesian networks are regarded as one of the essential tools to analyze causal relationship between ...
Bayesian networks are graphical statistical models that represent inference between data. For their ...
Design of evolutionary methods applied to the learning of Bayesian network structures 1
This paper demonstrates how genetic algorithms can be used to discover the structure of a Bayesian n...
Chapter 11International audienceBayesian networks are graphical statistical models that represent in...