In this paper we propose a Pyramidal Classification Algorithm, which together with an appropriate aggregation index produces an indexed pseudo-hierarchy (in the strict sense) without inversions nor crossings. The computer implementation of the algorithm makes it possible to carry out some simulation tests by Monte Carlo methods in order to study the efficiency and sensitivity of the pyramidal methods of the Maximum, Minimum and UPGMA. The results shown in this paper may help to choose between the three classification methods proposed, in order to obtain the classification that best fits the original structure of the population, provided we have an a priori information concerning this structure
In the field of computer vision, pyramid matching by minimization has gained increasing popularity. ...
In this work, the selection of an effective algorithm for solving the classification problem was con...
In this paper, we propose the Pyramid-Technique, a new indexing method for high-dimensional data spa...
In this paper we propose a Pyramidal Classification Algorithm,which together with an appropriate agg...
Cluster Analysis is a collection of techniques whose goals are to try and suggest possible internal ...
Abstract: Hierarchical data structures such as irregular pyramids are used by many applications rela...
International audienceSegmentation algorithms based on an energy minimisation framework often depend...
Le séquençage de génomes complets produit des quantités de données et la génomique comparative intro...
A new class of nonparametric algorithms for high-dimensional binary classification is proposed using...
Exact methods for Agglomerative Hierarchical Clustering (AHC) with average linkage do not scale well...
In theoretical computer science, the Turing machine was introduced as a simple mathematical model of...
Image analysis is a field intensively using the notions of parallelism and recursivity . The pyramid...
This paper is a review of promising applications of pyramidal classification to biological data. We ...
We perform a general optimization of the parameters in the multilevel Monte Carlo (MLMC) discretizat...
The following thesis studies both parametric and non parametric approaches to classification. Among ...
In the field of computer vision, pyramid matching by minimization has gained increasing popularity. ...
In this work, the selection of an effective algorithm for solving the classification problem was con...
In this paper, we propose the Pyramid-Technique, a new indexing method for high-dimensional data spa...
In this paper we propose a Pyramidal Classification Algorithm,which together with an appropriate agg...
Cluster Analysis is a collection of techniques whose goals are to try and suggest possible internal ...
Abstract: Hierarchical data structures such as irregular pyramids are used by many applications rela...
International audienceSegmentation algorithms based on an energy minimisation framework often depend...
Le séquençage de génomes complets produit des quantités de données et la génomique comparative intro...
A new class of nonparametric algorithms for high-dimensional binary classification is proposed using...
Exact methods for Agglomerative Hierarchical Clustering (AHC) with average linkage do not scale well...
In theoretical computer science, the Turing machine was introduced as a simple mathematical model of...
Image analysis is a field intensively using the notions of parallelism and recursivity . The pyramid...
This paper is a review of promising applications of pyramidal classification to biological data. We ...
We perform a general optimization of the parameters in the multilevel Monte Carlo (MLMC) discretizat...
The following thesis studies both parametric and non parametric approaches to classification. Among ...
In the field of computer vision, pyramid matching by minimization has gained increasing popularity. ...
In this work, the selection of an effective algorithm for solving the classification problem was con...
In this paper, we propose the Pyramid-Technique, a new indexing method for high-dimensional data spa...