(Translated by https://www.hiragana.jp/)
GGobi - Wikipedia

GGobi is a free statistical software tool for interactive data visualization. GGobi allows extensive exploration of the data with Interactive dynamic graphics. It is also a tool for looking at multivariate data. R can be used in sync with GGobi (through rggobi). The GGobi software can be embedded as a library in other programs and program packages using an application programming interface (API) (integration into a stand-alone application) or as an add-on to existing languages and scripting environments, e.g., with the R command line or from a Perl or Python scripts. GGobi prides itself on its ability to link multiple graphs together.[2]

GGobi
DeveloperDeborah F. Swayne, Michael Lawrence, Hadley Wickham, Duncan Temple Lang, Di Cook, Heike Hofmann and Andreas Buja
Stable release
2.1.10.a Edit this on Wikidata / 10 June 2012; 12 years ago (10 June 2012)
OSWindows, OS X, Linux
LicenseGNU GPL, BSD, CPL[1]
Websitewww.ggobi.org

Overview

edit

GGobi was created to look at data matrices. The designers were interested in exploring multi-dimensional data. The program developers went through many name changes before settling on GGobi (A combination of the words GTK+ and the Gobi Desert). The original concept, Dataviewer, began in the mid-80s, and a predecessor, XGobi, began in 1989. Work began on the current version of GGobi in 1999. The main reason for the different versions was the change in technology.[3] Current version for MS Windows is 2.1.10a (12 March 2010) with an update for 64 bit usage from 10 June 2012.

Released under a combination of three free software licenses, GGobi is free software.[1]

GGobi Topics

edit
 
This shows a projection from a 2D tour of 6D, where three clusters are visible. Two points are highlighted as yellow, which appear in the same color in other plots.
 
Parallel coordinate plot linked to scatterplot, show traces of the two points highlighted in the scatterplot.

Importance of graphics

edit

Looking at data through various graphs can reveal more information about the distribution than just looking at the numbers or a summary of them. Using the different tools within GGobi, clusters, non-linear distributions, outliers, and other important variations in the data can be discovered. GGobi is a program which allows exploratory data analysis to occur for multi-dimensional data.

Supported data sources

edit

GGobi can read CSV and XML file types.[4]

Types of graphics

edit

Interactions

edit

These tools can be used to pick out special points or clusters of data.

As the brush moves over a point, the point will be highlighted.
If "persistent" is selected, the points the brush has moved over will remain "painted".
  • Identify
As the cursor moves over a point, a label, or variable value will appear at the top of the graphic screen.
  • Linking
Multiple plots are linked so identifying one point in one plot will identify the same point on all other graphs, and brushing a group of points in one plot will highlight the same points in other plots. The linking can be one-to-one, or according to the values of a categorical variable in the data set.
  • Moving points
Points in a plot can be moved interactively, e.g. to gauge results from multidimensional scaling.
  • Add/remove points or edges.

See also

edit

References

edit
  1. ^ a b "GGobi licences page".
  2. ^ XGobi is listed on Michael Friendly's Milestones of Statistical Graphics Archived 2014-04-14 at the Wayback Machine webpage.
  3. ^ The history of GGobi
  4. ^ XML - XML format for ggobi

Further reading

edit
  • Buja, A., D. Cook, and D.F. Swayne (March 1998). "XGobi: Interactive Dynamic Data Visualization in the X Window System". in: Journal of Computational and Graphical Statistics 7 (1): 113–130.
  • Buja, A., D.T. Lang, and D.F. Swayne (August 28, 2003). "GGobi: Evolving From XGobi into an Extensible Framework for Interactive Data Visualization". In: Journal of Computational Statistics and Data Analysis 43 (4): 423–444.
  • Cook, D. and D.F. Swayne (2007), with contributions from Andreas Buja, Duncan Temple Lang, Heike Hofmann, Hadley Wickham, and Michael Lawrence. Interactive and Dynamic Graphics for Data Analysis: With R and GGobi. DOI: 10.1007/978-0-387-71762-3, Springer-Verlag New York.
edit