While there are many visualization techniques for exploring numeric data, only a few work with categorical data. One prominent example is Parallel Sets, showing data frequencies instead of data points - analogous to parallel coordinates for numerical data. As nominal data does not have an intrinsic order, the design of Parallel Sets is sensitive to visual clutter due to overlaps, crossings, and subdivision of ribbons hindering readability and pattern detection. In this paper, we propose a set of quality metrics, called ParSetgnostics (Parallel Sets diagnostics), which aim to improve Parallel Sets by reducing clutter. These quality metrics quantify important properties of Parallel Sets such as overlap, orthogonality, ribbon width variance, a...
Many people in widely varied fields are exposed to categorical data describing myriad observations. ...
The exploration and visualization of hierarchical and multi-dimensional datasets is a fundamental ch...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
Figure 1: A visualization of a CRM data set which contains 93.872 data records; three categorical di...
Abstract — Interactive visualization requires the translation of data into a screen space of limited...
Although Parallel Sets, a popular categorical data visualization technique, intuitively reveals the ...
The representation of data quality within established high-dimensional data visualization techniques...
The representation of data quality within established high-dimensional data visualization techniques...
The representation of data quality within established high-dimensional data visualization techniques...
The representation of data quality within established high-dimensional data visualization techniques...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Many people in widely varied fields are exposed to categorical data describing myriad observations. ...
The exploration and visualization of hierarchical and multi-dimensional datasets is a fundamental ch...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
While there are many visualization techniques for exploring numeric data, only a few work with categ...
Figure 1: A visualization of a CRM data set which contains 93.872 data records; three categorical di...
Abstract — Interactive visualization requires the translation of data into a screen space of limited...
Although Parallel Sets, a popular categorical data visualization technique, intuitively reveals the ...
The representation of data quality within established high-dimensional data visualization techniques...
The representation of data quality within established high-dimensional data visualization techniques...
The representation of data quality within established high-dimensional data visualization techniques...
The representation of data quality within established high-dimensional data visualization techniques...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Many people in widely varied fields are exposed to categorical data describing myriad observations. ...
The exploration and visualization of hierarchical and multi-dimensional datasets is a fundamental ch...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...