In many application fields, data analysts have to deal with datasets that contain many expressions per item. The effective analysis of such multivariate datasets is dependent on the user's ability to understand both the intrinsic dimensionality of the dataset as well as the distribution of the dependent values with respect to the dimensions. In this paper, we propose a visualization model that enables the joint interactive visual analysis of multivariate datasets with respect to their dimensions as well as with respect to the actual data values. We describe a dual setting of visualization and interaction in items space and in dimensions space. The visualization of items is linked to the visualization of dimensions with brushing and focus+co...
The identification of interesting patterns and relationships is essential to exploratory data analys...
Abstract—Datasets with a large number of dimensions per data item (hundreds or more) are challenging...
Visual analysis of high dimensional data is a challenging process. Direct visualizations work well f...
Background: Visualization is an important tool for generating meaning from scientific data, but the ...
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...
In the present work we have selected a collection of statistical and mathematical tools useful for t...
Abstract In the present work we have selected a collection of statistical and mathematical tools use...
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...
Dimensionality Reduction (DR) is a core building block in visualizing multidimensional data. For DR ...
Dimensionality Reduction, in particular, projection-based methods transform the data to a lower-dime...
In recent years, data analysts have been confronted by increasing amounts of data, often in the form...
The identification of interesting patterns and relationships is essential to exploratory data analys...
Abstract—Datasets with a large number of dimensions per data item (hundreds or more) are challenging...
Visual analysis of high dimensional data is a challenging process. Direct visualizations work well f...
Background: Visualization is an important tool for generating meaning from scientific data, but the ...
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...
In the present work we have selected a collection of statistical and mathematical tools useful for t...
Abstract In the present work we have selected a collection of statistical and mathematical tools use...
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...
Dimensionality Reduction (DR) is a core building block in visualizing multidimensional data. For DR ...
Dimensionality Reduction, in particular, projection-based methods transform the data to a lower-dime...
In recent years, data analysts have been confronted by increasing amounts of data, often in the form...
The identification of interesting patterns and relationships is essential to exploratory data analys...
Abstract—Datasets with a large number of dimensions per data item (hundreds or more) are challenging...
Visual analysis of high dimensional data is a challenging process. Direct visualizations work well f...