We introduce a novel interactive framework for visualizing and exploring high-dimensional datasets based on subspace analysis and dynamic projections. We assume the high-dimensional dataset can be represented by a mixture of low-dimensional linear subspaces with mixed dimensions, and provide a method to reliably estimate the intrinsic dimension and linear basis of each subspace extracted from the subspace clustering. Subsequently, we use these bases to define unique 2D linear projections as viewpoints from which to visualize the data. To understand the relationships among the different projections and to discover hidden patterns, we connect these projections through dynamic projections that create smooth animated transitions between pairs o...
Multidimensional data analysis is considerably important when dealing with such large and complex da...
Multidimensional projections map data points, defined in a high-dimensional data space, into a 1D, 2...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
Understanding high-dimensional data is rapidly becoming a central challenge in many areas o
For high-dimensional data, this work proposes two novel visual exploration methods to gain insights ...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Dimensionality Reduction, in particular, projection-based methods transform the data to a lower-dime...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Multidimensional projections (MPs) are effective methods for visualizing high-dimensional datasets t...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
Projections of high-dimensional data onto low-dimensional subspaces provide insightful views for und...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Understanding three-dimensional projections created by dimensionality reduction from high-variate da...
We introduce a set of integrated interaction techniques to interpret and interrogate dimensionality-...
Multidimensional projections are an increasingly popular technique for visualizing large datasets co...
Multidimensional data analysis is considerably important when dealing with such large and complex da...
Multidimensional projections map data points, defined in a high-dimensional data space, into a 1D, 2...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
Understanding high-dimensional data is rapidly becoming a central challenge in many areas o
For high-dimensional data, this work proposes two novel visual exploration methods to gain insights ...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Dimensionality Reduction, in particular, projection-based methods transform the data to a lower-dime...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Multidimensional projections (MPs) are effective methods for visualizing high-dimensional datasets t...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
Projections of high-dimensional data onto low-dimensional subspaces provide insightful views for und...
Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional...
Understanding three-dimensional projections created by dimensionality reduction from high-variate da...
We introduce a set of integrated interaction techniques to interpret and interrogate dimensionality-...
Multidimensional projections are an increasingly popular technique for visualizing large datasets co...
Multidimensional data analysis is considerably important when dealing with such large and complex da...
Multidimensional projections map data points, defined in a high-dimensional data space, into a 1D, 2...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...