The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection techniques such as Principal Component Analysis, Multi-dimensional Scaling and Self-Organizing Map can be used to map high-dimensional data to 2D display space. However, projections typically incur a loss in information. Often, uncertainty exists regarding the precision of the projection as compared with its original data characteristics. While the output quality of these projection techniques can be discussed in terms of aggregate numeric error values, visualization is often helpful for better understanding the projection results. We address the visual assessment of projection precision by an approach integrating an appropriately designed pr...
Projecting multidimensional data to a lower-dimensional visual display as a scatter-plot-like visual...
In thesis two ways to evaluate projection error for massive data sets are proposed. One of them is b...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
We introduce a set of integrated interaction techniques to interpret and interrogate dimensionality-...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
Multidimensional projections map data points, defined in a high-dimensional data space, into a 1D, 2...
Projecfing multidimensional data to a lower-dimensional visual displayas a scatter-plot-llke visuali...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Projecting multidimensional data to a lower-dimensional visual display as a scatter-plot-like visual...
In thesis two ways to evaluate projection error for massive data sets are proposed. One of them is b...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection ...
We introduce a set of integrated interaction techniques to interpret and interrogate dimensionality-...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
In recent years, many dimensionality reduction (DR) algorithms have been proposed for visual analysi...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
Multidimensional projections map data points, defined in a high-dimensional data space, into a 1D, 2...
Projecfing multidimensional data to a lower-dimensional visual displayas a scatter-plot-llke visuali...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Projecting multidimensional data to a lower-dimensional visual display as a scatter-plot-like visual...
In thesis two ways to evaluate projection error for massive data sets are proposed. One of them is b...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...