Clustering task aims at the unsupervised classification of patterns (e.g., observations, data, vec- tors, etc.) in different groups. Clustering problem has been approached from different disciplines during the last years. Although have been proposed different alternatives to cope with clustering, there also exists an interesting and novel field of research from which different bioinspired algorithms have emerged, e.g., genetic algorithms and ant colony algorithms. In this article we pro- pose an extension of the AntTree algorithm, an example of an algorithm recently proposed for a data mining task which is designed following the principle of self-assembling behavior observed in some species of real ants. The extension proposed called Adap...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
In this paper is presented a new model for data clustering, which is inspired from the self-assembly...
Data stream mining is the process of extracting knowledge from continuous sequences of data. It diff...
In this paper we will present a new clustering algorithm for unsupervised learning. It is inspired f...
International audienceIn this paper is presented a new model for data clustering, which is inspired ...
Wepresent in this paper a modification of Lumer and Faieta’s algorithm for data clustering. This app...
International audienceIn this paper, we introduce a new method to solve the unsupervised clustering ...
Abstract. Ant-based clustering is a biologically inspired data cluster-ing technique. In this techni...
AbstractDENNEUBOURG presents the first ant-based clustering algorithm in 1991.Ant colony clustering ...
This paper proposes a heuristic to improve the convergence speed of the standard ant clustering algo...
International audienceThis paper describes the Visual AntClust clustering algorirthm that relies on ...
International audience For many examples of social insect metaphor for solving problems, several alg...
In this paper we introduce a new ant-based method that takes advantage of the cooperative self-organ...
AbstractAnt-based clustering (ABC) is a data clustering approach inspired from cemetery formation ac...
Among the many bio-inspired techniques, ant-based clustering algorithms have received special attent...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
In this paper is presented a new model for data clustering, which is inspired from the self-assembly...
Data stream mining is the process of extracting knowledge from continuous sequences of data. It diff...
In this paper we will present a new clustering algorithm for unsupervised learning. It is inspired f...
International audienceIn this paper is presented a new model for data clustering, which is inspired ...
Wepresent in this paper a modification of Lumer and Faieta’s algorithm for data clustering. This app...
International audienceIn this paper, we introduce a new method to solve the unsupervised clustering ...
Abstract. Ant-based clustering is a biologically inspired data cluster-ing technique. In this techni...
AbstractDENNEUBOURG presents the first ant-based clustering algorithm in 1991.Ant colony clustering ...
This paper proposes a heuristic to improve the convergence speed of the standard ant clustering algo...
International audienceThis paper describes the Visual AntClust clustering algorirthm that relies on ...
International audience For many examples of social insect metaphor for solving problems, several alg...
In this paper we introduce a new ant-based method that takes advantage of the cooperative self-organ...
AbstractAnt-based clustering (ABC) is a data clustering approach inspired from cemetery formation ac...
Among the many bio-inspired techniques, ant-based clustering algorithms have received special attent...
In the so-called Big Data paradigm descriptive analytics are widely conceived as techniques and mode...
In this paper is presented a new model for data clustering, which is inspired from the self-assembly...
Data stream mining is the process of extracting knowledge from continuous sequences of data. It diff...