Bayesian multi-net (BMN) classifiers consist of several local models, one for each data subset, to model asymmetric, more consistent dependency relationships among variables in each subset. This paper extends an earlier work of ours and proposes several contributions to the field of clustering-based BMN classifiers, using Ant Colony Optimisation (ACO). First, we introduce a new medoid-based method for ACO-based clustering in the Ant-ClustBMB algorithm to learn BMNs. Both this algorithm and our previously introduced Ant-ClustBIB for instance-based clustering have their effectiveness empirically compared in the context of the “cluster-then-learn” approach, in which the ACO clustering step completes before learning the local BN classifiers. Se...
Recently, much research has been proposed using nature inspired algorithms to perform complex machin...
Ant colony optimization (ACO) can be applied to the data mining field to extract rule-based classifi...
In this work we consider spatial clustering problem with no a priori information. The number of clus...
Bayesian Multi-nets (BMNs) are a special kind of Bayesian network (BN) classifiers that consist of s...
Bayesian Multi-nets (BMNs) are a special kind of Bayesian network (BN) classifiers that consist of s...
AbstractOne important approach to learning Bayesian networks (BNs) from data uses a scoring metric t...
ABC-Miner is a Bayesian classification algorithm based on the Ant colony optimization (ACO) meta-heu...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Clustering is a distribution of data into groups of similar objects. In this paper, Ant Colony Optim...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
The application of ACO-based algorithms in data mining has been growing over the last few years, and...
Clustering is a machine learning technique that places data elements into related groups. Clustering...
Recently, much research has been proposed using nature inspired algorithms to perform complex machin...
Ant colony optimization (ACO) can be applied to the data mining field to extract rule-based classifi...
In this work we consider spatial clustering problem with no a priori information. The number of clus...
Bayesian Multi-nets (BMNs) are a special kind of Bayesian network (BN) classifiers that consist of s...
Bayesian Multi-nets (BMNs) are a special kind of Bayesian network (BN) classifiers that consist of s...
AbstractOne important approach to learning Bayesian networks (BNs) from data uses a scoring metric t...
ABC-Miner is a Bayesian classification algorithm based on the Ant colony optimization (ACO) meta-heu...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Bayesian networks are a useful tool in the representation of uncertain knowledge. This paper propose...
Clustering is a distribution of data into groups of similar objects. In this paper, Ant Colony Optim...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
The application of ACO-based algorithms in data mining has been growing over the last few years, and...
Clustering is a machine learning technique that places data elements into related groups. Clustering...
Recently, much research has been proposed using nature inspired algorithms to perform complex machin...
Ant colony optimization (ACO) can be applied to the data mining field to extract rule-based classifi...
In this work we consider spatial clustering problem with no a priori information. The number of clus...