Star Coordinates is an important visualization method able to reveal patterns and groups from multidimensional data while still showing the impact of data attributes in the formation of such patterns and groups. Despite its usefulness, Star Coordinates bears limitations that impair its use in several scenarios. For instance, when the number of data dimensions is high, the resulting visualization becomes cluttered, hampering the joint analysis of attribute importance and group/pattern formation. In this paper, we propose a novel method that renders Star Coordinates a feasible alternative to analyze high-dimensional data. The proposed method relies on a clustering mechanism to group attributes in order to mitigate visual clutter. Clustering c...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
This paper presents a 3D star coordinate-based visualization technique for exploratory data analysis...
AbstractThe twenty first century sees the tremendous advancement of computer and machine technologie...
Interactive visual cluster analysis is the most intuitive way for finding clustering patterns, valid...
Star Coordinate (SC) is a circular visualization technique that maps kdimensional data. Its interact...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
Data sets in astronomy are growing to enormous sizes. Modern astronomical surveys provide not only i...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
A key element in the success of data analysis is the strong contribu- tion of visualization: dendrog...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Data sets in many scientific areas are growing to enormous sizes. For example, modern astronomical s...
Preserving all multidimensional data in two-dimensional visualization is a long-standing problem in ...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...
This paper presents a 3D star coordinate-based visualization technique for exploratory data analysis...
AbstractThe twenty first century sees the tremendous advancement of computer and machine technologie...
Interactive visual cluster analysis is the most intuitive way for finding clustering patterns, valid...
Star Coordinate (SC) is a circular visualization technique that maps kdimensional data. Its interact...
High-dimensional data visualization is receiving increasing interest because of the growing abundanc...
Data sets in astronomy are growing to enormous sizes. Modern astronomical surveys provide not only i...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
A key element in the success of data analysis is the strong contribu- tion of visualization: dendrog...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Data sets in many scientific areas are growing to enormous sizes. For example, modern astronomical s...
Preserving all multidimensional data in two-dimensional visualization is a long-standing problem in ...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Subspace clustering addresses an important problem in clustering multi-dimensional data. In sparse m...