Document Type
Conference Proceeding
Publication Date
2017
Abstract
The representation of data quality within established high-dimensional data visualization techniques such as scatterplots and parallel coordinates is still an open problem. This work offers a scale-invariant measure based on Pareto optimality that is able to indicate the quality of data points with respect to the Pareto front. In cases where datasets contain noise or parameters that cannot easily be expressed or evaluated mathematically, the presented measure provides a visual encoding of the environment of a Pareto front to enable an enhanced visual inspection.
Repository Citation
Post, T.,
Wischgoll, T.,
Hamann, B.,
& Hagen, H.
(2017). A High-Dimensional Data Quality Metric using Pareto Optimality. Eurographics Conference on Visualization (EuroVis), Posters Track (2017).
https://corescholar.libraries.wright.edu/cse/485
DOI
10.2312/eurp.20171187
Comments
Presented at EuroVis 2017 - Posters.