Parallel coordinates have been widely applied to visualize high-dimensional and multivariate data, discerning patterns within the data through visual clustering. However, the effectiveness of this technique on large data is reduced by edge clutter In this paper, we present a novel framework to reduce edge clutter, consequently improving the effectiveness of visual clustering. We exploit curved edges and optimize the arrangement of these curved edges by minimizing their curvature and maximizing the parallelism of adjacent edges. The overall visual clustering is improved by adjusting the shape of the edges while keeping their relative order The experiments on several representative datasets demonstrate the effectiveness of our approach
The edge, which can encode relational data in graphs and multidimensional data in parallel coordinat...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
The order and arrangement of dimensions (variates) is crucial for the effectiveness of a large numbe...
Information visualization has emerged as a very active research field for multivariate and relationa...
Parallel Coordinates is an often used visualization method for multidimensional data sets. Its main ...
Graphs have been widely used to model relationships among data. For large graphs, excessive edge cro...
Graphs have been widely used to model relationships among data. For large graphs, excessive edge cro...
Figure 1: The Cars data set shown using the classic parallel coordinates plot (PCP) on the left, and...
In this paper, we propose an approach of clustering data in parallel coordinates through interactive...
Abstract—We describe a technique for bundled curve represen-tations in parallel-coordinates plots an...
Abstract — The polygonal lines traditionally used in parallel coordinates have two substantial limit...
In this paper, we propose an approach of clustering data in paral-lel coordinates through interactiv...
Parallel coordinates is a fundamental visualization technique in multivariate data visualization. Vi...
The objective of the thesis is to explore graph layout and edge clustering to improve graph visibili...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
The edge, which can encode relational data in graphs and multidimensional data in parallel coordinat...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
The order and arrangement of dimensions (variates) is crucial for the effectiveness of a large numbe...
Information visualization has emerged as a very active research field for multivariate and relationa...
Parallel Coordinates is an often used visualization method for multidimensional data sets. Its main ...
Graphs have been widely used to model relationships among data. For large graphs, excessive edge cro...
Graphs have been widely used to model relationships among data. For large graphs, excessive edge cro...
Figure 1: The Cars data set shown using the classic parallel coordinates plot (PCP) on the left, and...
In this paper, we propose an approach of clustering data in parallel coordinates through interactive...
Abstract—We describe a technique for bundled curve represen-tations in parallel-coordinates plots an...
Abstract — The polygonal lines traditionally used in parallel coordinates have two substantial limit...
In this paper, we propose an approach of clustering data in paral-lel coordinates through interactiv...
Parallel coordinates is a fundamental visualization technique in multivariate data visualization. Vi...
The objective of the thesis is to explore graph layout and edge clustering to improve graph visibili...
Fig. 1. Hierarchical clustering results on a synthetic point dataset (the black dots) are shown as a...
The edge, which can encode relational data in graphs and multidimensional data in parallel coordinat...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
The order and arrangement of dimensions (variates) is crucial for the effectiveness of a large numbe...