International audienceMapping high-dimensional data in a low-dimensional space, for example, for visualization, is a problem of increasingly major concern in data analysis. This paper presents data-driven high-dimensional scaling (DD-HDS), a nonlinear mapping method that follows the line of multidimensional scaling (MDS) approach, based on the preservation of distances between pairs of data. It improves the performance of existing competitors with respect to the representation of high-dimensional data, in two ways. It introduces (1) a specific weighting of distances between data taking into account the concentration of measure phenomenon and (2) a symmetric handling of short distances in the original and output spaces, avoiding false neighb...
We present a set of algorithms for Multidimensional Scaling (MDS) to be used with large datasets. MD...
Abstract This paper introduces a method called relational perspective map (RPM) to visualize distanc...
This paper introduces a method called relational perspective map (RPM) to visualize distance informa...
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...
In this paper we address the problem of high-dimensionality for data that lies on complex manifolds....
Multidimensional scaling provides dimensionality reduction for high-dimensional data. Most of the av...
Multidimensional scaling has a wide range of applications when observations are not continuous but i...
AbstractThe embedding of high-dimensional data into 2D/3D space is the most popular way of data visu...
<p>Multidimensional scaling has a wide range of applications when observations are not continuous bu...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
In recent years, the huge expansion of digital technologies has vastly increased the volume of data ...
Data visualization of high-dimensional data is possible through the use of dimensionality reduction ...
We present a set of algorithms for Multidimensional Scaling (MDS) to be used with large datasets. MD...
Abstract This paper introduces a method called relational perspective map (RPM) to visualize distanc...
This paper introduces a method called relational perspective map (RPM) to visualize distance informa...
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...
In this paper we address the problem of high-dimensionality for data that lies on complex manifolds....
Multidimensional scaling provides dimensionality reduction for high-dimensional data. Most of the av...
Multidimensional scaling has a wide range of applications when observations are not continuous but i...
AbstractThe embedding of high-dimensional data into 2D/3D space is the most popular way of data visu...
<p>Multidimensional scaling has a wide range of applications when observations are not continuous bu...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
In recent years, the huge expansion of digital technologies has vastly increased the volume of data ...
Data visualization of high-dimensional data is possible through the use of dimensionality reduction ...
We present a set of algorithms for Multidimensional Scaling (MDS) to be used with large datasets. MD...
Abstract This paper introduces a method called relational perspective map (RPM) to visualize distanc...
This paper introduces a method called relational perspective map (RPM) to visualize distance informa...