Zaixian Xie and Shiping Huang and Mattew Ward and Elke Rundensteiner.
"Exploratory Visualization of Multivariate Data with Variable Quality".
In IEEE Symposium on Visual Analytics Science and Technology, pp. 183--190, 2006.


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Abstract:

Real-world data is known to be imperfect, suffering from various forms of defects such as sensor variability, estimation errors, uncertainty, human errors in data entry, and gaps in data gathering. Analysis conducted on variable quality data can lead to inaccurate or incorrect results. An effective visualization system must make users aware of the quality of their data by explicitly conveying not only the actual data content, but also its quality attributes. While some research has been conducted on visualizing uncertainty in spatio-temporal data and univariate data, little work has been reported on extending this capability into multivariate data visualization. In this paper we describe our approach to the problem of visually exploring multivariate data with variable quality. As a foundation, we propose a general approach to defining quality measures for tabular data, in which data may experience quality problems at three granularities: individual data values, complete records, and specific dimensions. We then present two approaches to visual mapping of quality information into display space. In particular, one solution embeds the quality measures as explicit values into the original dataset by regarding value quality and record quality as new data dimensions. The other solution is to superimpose the quality information within the data visualizations using additional visual variables. We also report on user studies conducted to assess alternate mappings of quality attributes to visual variables for the second method. In addition, we describe case studies that expose some of the advantages and disadvantages of these two approaches.

Bibtex:

@InProceedings{  xie:2006:MVVQ,
  Author = 	 "Zaixian Xie and Shiping Huang and Mattew Ward and Elke Rundensteiner",
  title = 	 "Exploratory Visualization of Multivariate Data with Variable Quality",
  booktitle =    "IEEE Symposium on Visual Analytics Science and Technology",
  pages = 	 "183--190",
  year = 	 "2006",
}

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References:

P. D. Allison. Missing data. SAGE Publications, Thousand Oaks CA, 2002.
R. Amar and J. Stasko. A knowledge task-based framework for design and evaluation of information visualizations. Proc. IEEE Symposium on Information Visualization, pages 143-150, 2004.
M. K. Beard, B. P. Buttenfield, and S. B. Clapham. NCGIA research initiative 7: Visualization of spatial data quality. Technical report, National Center for Geographic Information and Analysis, 1991.
R. Brown. Animated visual vibrations as an uncertainty visualisation technique. Proc. 2nd international conference on Computer graphics and interactive techniques in Australasia and Southe East Asia, pages 84-89, 2004.
A. Cedilnik and P. Rheingans. Procedural annotation of uncertain in- formation. In Proc. IEEE Symposium on Information Visualization, pages 77-84, 2000.
DASL. The data and story library. Cornell University, 1996.
H. Hofmann and M. Theus. Selection sequences in manet. Computa- tional Statistics, 13(1):77-88, 1998.
S. Huang. Exploratory visualization of data with variable quality. Master's thesis, Worcester Polytechnic Institute, 2004.
G. J. Hunter. New tools for handling spatial data quality: Moving from academic concepts to practical reality. URISA Journal, 11(2):25-34, 1999.
C. Johnson, R. Moorhead, T. Munzner, H. Pfister, P. Rheingans, and T. S. Yoo. NIH-NSF Visualization Research Challenges Report. IEEE Computer Society, Los Alamitos CA, 2006.
A. M. MacEachren. Visualizing uncertain information. Cartographic Perspective, 13:10-19, 1992.
A. Martin and M. Ward. High dimensional brushing for interactive exploration of multivariate data. Proc. of Visualization, pages 271- 278, 1995.
D. Newman, S. Hettich, C. Blake, and C. Merz. UCI repository of
. University of California, Irvine, Dept. of Informa- tion and Computer Sciences, 1998.
C. Olston and J. D. Mackinlay. Visualizing data with bounded uncer- tainty. In Proc. IEEE Symposium on Information Visualization, pages 37-40, 2002.
A. Pang. Visualizing uncertainty in geo-spatial data. report for a com- mittee of the computer science and telecommunications board. Tech- nical report, University of California, Santa Cruz, 2001.
A. Pang, C. Wittenbrink, and S. Lodha. Approaches to uncertainty visualization. The Visual Computer, 13(8):370-390, 1997.
StatLib. Statlib-datasets archive. Carnegie Mellon University, Dept. of Statistics, 1999.
D. Swayne and A. Buja. Missing data in interactive high-dimensional data visualization. Computational Statistics, 13(1):15-26, 1998.
B. N. Taylor and C. E. Kuyatt. Guidelines for evaluating and ex- pressing the uncertainty of nist measurement results. Technical report, National Institute of Standards and Technology Technical Note 1297, 1994.
J. J. Thomas and K. A. Cook. Illuminating the Path: The Research and Development Agenda for Visual Analytics. IEEE Computer Society, Los Alamitos CA, 2005.
E. Tufte. The Visual Display of Quantitative Information. Graphics Press, Cheshire CT, 1982.
A. Unwin, G. Hawkins, H. Hofmann, and B. Siegl. Interactive graph- ics for data sets with missing values - manet. Journal of Computaional and Graphical Statistics, 4(6):113-122, 1996.
C. Ware. Information Visualization: Perception for Design. Morgan Kaufmann Publishers, San Francisco CA, second edition, 2004.
C. Wittenbrink, A. Pang, and S. Lodha. Glyphs for visualizing un- certainty in vector fields. IEEE Transactions on Visualization and Computer Graphics, 2(3):266-279, 1996.
J. Yang, M. O. Ward, E. A. Rundensteiner, and S. Huang. Visual hierarchical dimension reduction for exploration of high dimensional datasets. Joint Eurographics - IEEE TCVG Symposium on Visualiza- tion, pages 19-28, 2003.