In this work, we present a novel method based on behavior of real ants for solving unsupervised non-hierarchical classification problem. This approach dynamically creates data groups. It is based on the concept of artificial ants moving complexly at the same time with simple location rules. Each ant represents a data in the algorithm. The movements of ants aim to create homogenous data groups that evolve together in a graph structure. We also propose a method of incremental building neighborhood graphs by artificial ants. We propose two approaches that are derived among biomimetic algorithms, they are hybrid in the sense that the search for the number of classes starting, which are performed by the classical algorithm K-Means classification...
International audienceIn this paper is presented a new model for data clustering, which is inspired ...
This paper provides a new intelligent technique for semisupervised data clustering problem that comb...
International audienceIn this paper, we introduce a new method to solve the unsupervised clustering ...
In this work, we present a novel method based on behavior of real ants for solving unsupervised non-...
Dans ce travail de thèse, nous présentons une méthode originale s’inspirant des comportements des fo...
International audienceIn this paper we present a summary of our work which has proposed a new model ...
In this thesis, we present works inspired by real ants for the resolution of well known problems in ...
In this work we present a new clustering algrorithm for hierarchical clustering. It is inspired from...
In this paper we will present a new clustering algorithm for unsupervised learning. It is inspired f...
International audienceAs an important technique for data mining, clustering often consists in formin...
International audience For many examples of social insect metaphor for solving problems, several alg...
In this thesis, we develop a new clustering approach inspired from the chemical recognition system o...
In this paper we introduce a new ant-based method that takes advantage of the cooperative self-organ...
Clustering task aims at the unsupervised classification of patterns (e.g., observations, data, vec- ...
This paper proposes a novel data clustering algorithm, coined 'cellular ants', which combines princi...
International audienceIn this paper is presented a new model for data clustering, which is inspired ...
This paper provides a new intelligent technique for semisupervised data clustering problem that comb...
International audienceIn this paper, we introduce a new method to solve the unsupervised clustering ...
In this work, we present a novel method based on behavior of real ants for solving unsupervised non-...
Dans ce travail de thèse, nous présentons une méthode originale s’inspirant des comportements des fo...
International audienceIn this paper we present a summary of our work which has proposed a new model ...
In this thesis, we present works inspired by real ants for the resolution of well known problems in ...
In this work we present a new clustering algrorithm for hierarchical clustering. It is inspired from...
In this paper we will present a new clustering algorithm for unsupervised learning. It is inspired f...
International audienceAs an important technique for data mining, clustering often consists in formin...
International audience For many examples of social insect metaphor for solving problems, several alg...
In this thesis, we develop a new clustering approach inspired from the chemical recognition system o...
In this paper we introduce a new ant-based method that takes advantage of the cooperative self-organ...
Clustering task aims at the unsupervised classification of patterns (e.g., observations, data, vec- ...
This paper proposes a novel data clustering algorithm, coined 'cellular ants', which combines princi...
International audienceIn this paper is presented a new model for data clustering, which is inspired ...
This paper provides a new intelligent technique for semisupervised data clustering problem that comb...
International audienceIn this paper, we introduce a new method to solve the unsupervised clustering ...