High dimensionality is a major challenge for data visualization. Parameter optimization problems require an understanding of the behaviour of an objective function in an n-dimensional space around the optimum - this is multidimensional visualization and is a natural extension of the traditional domain of scientific visualization. Large numeric data tables with observations of many attributes require us to understand the relationship between these attributes - this is multivariate visualization and is an important aspect of information visualization. Common to both types of high dimensional visualization is a need to reduce the dimensionality for display. Although multidimensional and multivariate data are quite distinct, we show that a ...
The visual interpretation of data is an essential step to guide any further processing or decision m...
Traditional visualization techniques for multidimensional data sets, such as parallel coordinates, s...
Traditional multi-dimensional visualization techniques, such as glyphs, parallel coordinates and sca...
High dimensionality is a major challenge for data visualization. Parameter optimization problems req...
High dimensionality is a major challenge for data visualization. Parameter optimization problems req...
Higher-dimensional data, which is becoming common in many disciplines due to big data problems, are ...
Dimension reduction is commonly defined as the process of mapping high-dimensional data to a lower-d...
Background: Visualization is an important tool for generating meaning from scientific data, but the ...
Most visualization techniques have traditionally used two-dimensional, instead of three-dimensional ...
BackgroundVisualization is an important tool for generating meaning from scientific data, but the vi...
BackgroundVisualization is an important tool for generating meaning from scientific data, but the vi...
Abstract Background Visualization is an important too...
There has been extensive research on dimensionality reduction techniques. While these make it possib...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
There has been extensive research on dimensionality reduction techniques. While these make it possib...
The visual interpretation of data is an essential step to guide any further processing or decision m...
Traditional visualization techniques for multidimensional data sets, such as parallel coordinates, s...
Traditional multi-dimensional visualization techniques, such as glyphs, parallel coordinates and sca...
High dimensionality is a major challenge for data visualization. Parameter optimization problems req...
High dimensionality is a major challenge for data visualization. Parameter optimization problems req...
Higher-dimensional data, which is becoming common in many disciplines due to big data problems, are ...
Dimension reduction is commonly defined as the process of mapping high-dimensional data to a lower-d...
Background: Visualization is an important tool for generating meaning from scientific data, but the ...
Most visualization techniques have traditionally used two-dimensional, instead of three-dimensional ...
BackgroundVisualization is an important tool for generating meaning from scientific data, but the vi...
BackgroundVisualization is an important tool for generating meaning from scientific data, but the vi...
Abstract Background Visualization is an important too...
There has been extensive research on dimensionality reduction techniques. While these make it possib...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
There has been extensive research on dimensionality reduction techniques. While these make it possib...
The visual interpretation of data is an essential step to guide any further processing or decision m...
Traditional visualization techniques for multidimensional data sets, such as parallel coordinates, s...
Traditional multi-dimensional visualization techniques, such as glyphs, parallel coordinates and sca...