4.5 Article

Evaluating Data-type Heterogeneity in Interactive Visual Analyses with Parallel Axes

Journal

COMPUTER GRAPHICS FORUM
Volume 41, Issue 1, Pages 335-349

Publisher

WILEY
DOI: 10.1111/cgf.14438

Keywords

information visualization; visual analytics; visualization; user studies; interaction

Funding

  1. Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) [310876543 (LI 1530/23-1)]

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The use of parallel axes in visualizing multidimensional data is popular, but there is a lack of clear strategies for representing categories and discretizing continuous ranges. Traditional and new approaches were evaluated, and the hybrid approach was found to provide more accurate results and faster response times for probability-based queries.
The application of parallel axes for the interactive visual analysis of multidimensional data is a widely used concept. While multidimensional data sets are commonly heterogeneous in nature, i.e. data items contain both numerical and categorical (including ordinal) attribute values, the use of parallel axes often assumes either numerical or categorical attributes. While Parallel Coordinates and their large variety of extensions focus on numerical data, Parallel Sets and related methods focus on categorical attributes. While both concepts allow for displaying heterogeneous data, no clear strategies have been defined for representing categories in Parallel Coordinates or discretization of continuous ranges in Parallel Sets. In practice, type conversion as a pre-processing step can be used as well as coordinated views of numerical and categorical data visualizations. We evaluate traditional and state-of-the-art approaches with respect to the interplay of categorical and numerical dimensions for querying probability-based events. We also compare against a heterogeneous Parallel Coordinates/Parallel Set approach with a novel interface between categorical and numerical axes . We show that approaches for mapping categorical data to numerical axis representations can lead to lower accuracy in answering probability-based questions and higher response times than hybrid approaches in multiple-event scenarios.

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