DocumentCode
22227
Title
Axis Calibration for Improving Data Attribute Estimation in Star Coordinates Plots
Author
Rubio-Sanchez, Manuel ; Sanchez, Abel
Author_Institution
URJC, Fuenlabrada, Spain
Volume
20
Issue
12
fYear
2014
fDate
Dec. 31 2014
Firstpage
2013
Lastpage
2022
Abstract
Star coordinates is a well-known multivariate visualization method that produces linear dimensionality reduction mappings through a set of radial axes defined by vectors in an observable space. One of its main drawbacks concerns the difficulty to recover attributes of data samples accurately, which typically lie in the [0], [1] interval, given the locations of the low-dimensional embeddings and the vectors. In this paper we show that centering the data can considerably increase attribute estimation accuracy, where data values can be read off approximately by projecting embedded points onto calibrated (i.e., labeled) axes, similarly to classical statistical biplots. In addition, this idea can be coupled with a recently developed orthonormalization process on the axis vectors that prevents unnecessary distortions. We demonstrate that the combination of both approaches not only enhances the estimates, but also provides more faithful representations of the data.
Keywords
calibration; computational geometry; data analysis; data visualisation; statistical analysis; attribute recovery; axis calibration; data attribute estimation; data representation; data samples; linear dimensionality reduction mappings; low-dimensional embeddings; multivariate visualization method; orthonormalization process; star coordinate plots; statistical biplots; Calibration; Data visualization; Estimation error; Linear systems; Multivariate regression; Attribute value estimation; Axis calibration; Biplots; Data centering; Orthographic projection; RadViz; Star Coordinates;
fLanguage
English
Journal_Title
Visualization and Computer Graphics, IEEE Transactions on
Publisher
ieee
ISSN
1077-2626
Type
jour
DOI
10.1109/TVCG.2014.2346258
Filename
6875998
Link To Document