The application of ACO-based algorithms in data mining has been growing over the last few years, and several supervised and unsupervised learning algorithms have been developed using this bio-inspired approach. Most recent works about unsupervised learning have focused on clustering, showing the potential of ACO-based techniques. However, there are still clustering areas that are almost unexplored using these techniques, such as medoid-based clustering. Medoid-based clustering methods are helpful—compared to classical centroid-based techniques—when centroids cannot be easily defined. This paper proposes two medoid-based ACO clustering algorithms, where the only information needed is the distance between data: one algorithm that uses an ACO ...
Abbstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abili...
Clustering is a machine learning technique that places data elements into related groups. Clustering...
Bayesian multi-net (BMN) classifiers consist of several local models, one for each data subset, to m...
The application of ACO-based algorithms in data mining has been growing over the last few years, and...
The application of ACO-based algorithms in data mining is growing over the last few years and severa...
Proceedings of 9th International Conference, ANTS 2014, Brussels, Belgium, September 10-12, 2014.he ...
Ant colony optimization (ACO) is a swarm algorithm inspired by different behaviors of ants. The algo...
Data clustering is a data mining technique that discovers hidden patterns by creating groups (cluste...
Abstract—This paper proposes a new clustering algorithm based on ant colony to solve the unsupervise...
A fundamental problem in data clustering is how to determine the correct number of clusters. The k-a...
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...
In this work we consider spatial clustering problem with no a priori information. The number of clus...
The Ant Colony Optimization (ACO) technique was inspired by the ants' behavior throughout their expl...
Data clustering is used in a number of fields including statistics, bioinformatics, machine learning...
Abbstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abili...
Clustering is a machine learning technique that places data elements into related groups. Clustering...
Bayesian multi-net (BMN) classifiers consist of several local models, one for each data subset, to m...
The application of ACO-based algorithms in data mining has been growing over the last few years, and...
The application of ACO-based algorithms in data mining is growing over the last few years and severa...
Proceedings of 9th International Conference, ANTS 2014, Brussels, Belgium, September 10-12, 2014.he ...
Ant colony optimization (ACO) is a swarm algorithm inspired by different behaviors of ants. The algo...
Data clustering is a data mining technique that discovers hidden patterns by creating groups (cluste...
Abstract—This paper proposes a new clustering algorithm based on ant colony to solve the unsupervise...
A fundamental problem in data clustering is how to determine the correct number of clusters. The k-a...
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...
In this work we consider spatial clustering problem with no a priori information. The number of clus...
The Ant Colony Optimization (ACO) technique was inspired by the ants' behavior throughout their expl...
Data clustering is used in a number of fields including statistics, bioinformatics, machine learning...
Abbstract- The DBSCALE [1] algorithm is a popular algorithm in Data Mining field as it has the abili...
Clustering is a machine learning technique that places data elements into related groups. Clustering...
Bayesian multi-net (BMN) classifiers consist of several local models, one for each data subset, to m...