Title
Arrangement of Low-Dimensional Parallel Coordinate Plots for High-Dimensional Data Visualization
Abstract
Multidimensional data visualization is an important research topic that has been receiving increasing attention. Several techniques that use parallel coordinate plots have been proposed to represent all dimensions of data in a single display space. In addition, several other techniques that apply scatter plot matrices have been proposed to represent multidimensional data as a collection of low-dimensional data visualization spaces. Typically, when using the latter approach it is easier to understand relations among particular dimensions, but it is often difficult to observe relations between dimensions separated into different visualization spaces. This paper presents a framework for displaying an arrangement of low-dimensional data visualization spaces that are generated from high-dimensional datasets. Our proposed technique first divides the dimensions of the input datasets into groups of lower dimensions based on their correlations or other relationships. If the groups of lower dimensions can be visualized in independent rectangular spaces, our technique packs the set of low-dimensional data visualizations into a single display space. Because our technique places relevant low-dimensions closer together in the display space, it is easier to visually compare relevant sets of low-dimensional data visualizations. In this paper, we describe in detail how we implement our framework using parallel coordinate plots, and present several results demonstrating its effectiveness.
Year
DOI
Venue
2013
10.1109/IV.2013.7
IV
Keywords
Field
DocType
multidimensional data,visualization space,low-dimensional data visualization,independent rectangular space,different visualization space,multidimensional data visualization,low-dimensional data,display space,single display space,low-dimensional parallel coordinate plots,high-dimensional data visualization,lower dimension,information visualization,data visualisation,high dimensional data
Data visualization,High dimensional data visualization,Clustering high-dimensional data,Information visualization,Computer graphics (images),Matrix (mathematics),Computer science,Visualization,Scatter plot
Conference
Citations 
PageRank 
References 
4
0.44
12
Authors
6
Name
Order
Citations
PageRank
Haruka Suematsu190.90
Zheng Yunzhu240.44
Takayuki Itoh350365.85
Ryohei Fujimaki419316.93
Satoshi Morinaga528846.89
Kawahara, Yoshinobu631731.30