This paper introduces a method called relational perspective map (RPM) to visualize distance information in high-dimensional spaces. Like conventional multidimensional scaling, the RPM algorithm aims to produce proximity preserving 2-dimensional (2-D) maps. The main idea of the RPM algorithm is to simulate a multiparticle system on a closed surface: whereas the repulsive forces between the particles reflect the distance information, the closed surface holds the whole system in balance and prevents the resulting map from degeneracy. A special feature of RPM algorithm is its ability to partition a complex dataset into pieces and map them onto a 2-D space without overlapping. Compared to other multidimensional scaling methods, RPM is able to r...
We discuss interactive techniques for multidimensional scaling (MDS) and a two sys-tems, named \GGvi...
Data visualization of high-dimensional data is possible through the use of dimensionality reduction ...
Visualization is one of the most effective methods for analyzing how high-dimensional data are distr...
Abstract This paper introduces a method called relational perspective map (RPM) to visualize distanc...
This paper deals with a method, called the relational perspective map that visualizes multidimension...
International audienceMapping high-dimensional data in a low-dimensional space, for example, for vis...
Mapping high-dimensional data in a low-dimensional space, for example, for visualization, is a probl...
Mapping high-dimensional data in a low-dimensional space, for example, for visualization, is a probl...
Many applications in science and business such as signal analysis or costumer segmentation deal with...
For two-class problems, we introduce and construct mappings of high-dimensional instances into dissi...
AbstractFor two-class problems, we introduce and construct mappings of high-dimensional instances in...
Nagrinėjamas santykinės perspektyvos metodas (angl. relational perspective map (RPM)), kuris vizuali...
We describe MPSE: a Multi-Perspective Simultaneous Embedding method for visualizing high-dimensional...
In this paper, we describe our concepts to visualize very large amounts of multidimensional data. Ou...
We consider tasks that require users to be aware of the proximity of two 3D surfaces and where one o...
We discuss interactive techniques for multidimensional scaling (MDS) and a two sys-tems, named \GGvi...
Data visualization of high-dimensional data is possible through the use of dimensionality reduction ...
Visualization is one of the most effective methods for analyzing how high-dimensional data are distr...
Abstract This paper introduces a method called relational perspective map (RPM) to visualize distanc...
This paper deals with a method, called the relational perspective map that visualizes multidimension...
International audienceMapping high-dimensional data in a low-dimensional space, for example, for vis...
Mapping high-dimensional data in a low-dimensional space, for example, for visualization, is a probl...
Mapping high-dimensional data in a low-dimensional space, for example, for visualization, is a probl...
Many applications in science and business such as signal analysis or costumer segmentation deal with...
For two-class problems, we introduce and construct mappings of high-dimensional instances into dissi...
AbstractFor two-class problems, we introduce and construct mappings of high-dimensional instances in...
Nagrinėjamas santykinės perspektyvos metodas (angl. relational perspective map (RPM)), kuris vizuali...
We describe MPSE: a Multi-Perspective Simultaneous Embedding method for visualizing high-dimensional...
In this paper, we describe our concepts to visualize very large amounts of multidimensional data. Ou...
We consider tasks that require users to be aware of the proximity of two 3D surfaces and where one o...
We discuss interactive techniques for multidimensional scaling (MDS) and a two sys-tems, named \GGvi...
Data visualization of high-dimensional data is possible through the use of dimensionality reduction ...
Visualization is one of the most effective methods for analyzing how high-dimensional data are distr...