Dimensionality reduction is the most widely used approach for extracting the most informative low-dimensional features from highdimensional ones. During the last two decades, different techniques (linear and nonlinear) have been proposed by researchers in various fields. However, the main question is now how well a specific technique does this job. In this paper, we introduce a qualitative method to assess the quality of dimensionality reduction. In contrast to numerical assessment, we focus here on visual assessment. We visualize the Minimum Spanning Tree (MST) of neighborhood graphs of data before and after dimensionality reduction in an immersive 3D virtual environment. We employe a mixture of linear and nonlinear dimension reduction tec...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
Nonlinear dimensionality reduction aims at providing low dimensional representations of high-dimensi...
Abstract. Many different evaluation measures for dimensionality re-duction can be summarized based o...
The visual interpretation of data is an essential step to guide any further processing or decision m...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
In this paper we address the issue of using local embeddings for data visualization in two and three...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
We are dealing with large-scale high-dimensional image data sets requiring new approaches for data ...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
Nonlinear dimensionality reduction aims at providing low dimensional representations of high-dimensi...
Abstract. Many different evaluation measures for dimensionality re-duction can be summarized based o...
The visual interpretation of data is an essential step to guide any further processing or decision m...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
In this paper we address the issue of using local embeddings for data visualization in two and three...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
We are dealing with large-scale high-dimensional image data sets requiring new approaches for data ...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
International audienceTo perform visual data exploration, many dimensionality reduction methods have...
Nonlinear dimensionality reduction aims at providing low dimensional representations of high-dimensi...
Abstract. Many different evaluation measures for dimensionality re-duction can be summarized based o...