4.2 Article

Techniques for precision-based visual analysis of projected data

Journal

INFORMATION VISUALIZATION
Volume 9, Issue 3, Pages 181-193

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1057/ivs.2010.2

Keywords

high-dimensional data analysis; projection precision; point cloud visualization

Funding

  1. German Research Foundation (DFG)

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The analysis of high-dimensional data is an important, yet inherently difficult problem. Projection techniques such as Principal Component Analysis, Multi-dimensional Scaling and Self-Organizing Map can be used to map high-dimensional data to 2D display space. However, projections typically incur a loss in information. Often, uncertainty exists regarding the precision of the projection as compared with its original data characteristics. While the output quality of these projection techniques can be discussed in terms of aggregate numeric error values, visualization is often helpful for better understanding the projection results. We address the visual assessment of projection precision by an approach integrating an appropriately designed projection precision measure directly into the projection visualization. To this end, a flexible projection precision measure is defined that allows the user to balance the degree of locality at which the measure is evaluated. Several visual mappings are designed for integrating the precision measure into the projection visualization at various levels of abstraction. The techniques are implemented in an interactive system, including methods supporting the user in finding appropriate settings of relevant parameters. We demonstrate the usefulness of the approach for visual analysis of classified and unclassified high-dimensional data sets. We show how our interactive precision quality visualization system helps to examine the preservation of original data properties in projected space. Information Visualization (2010) 9, 181-193. doi:10.1057/ivs.2010.2

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