Visual Interaction with Dimensionality Reduction: A Structured Literature Analysis

Visual Interaction with Dimensionality Reduction: A Structured Literature Analysis

Abstract

Dimensionality Reduction (DR) is a core building block in visualizing multidimensional data. For DR techniques to be useful in exploratory data analysis, they need to be adapted to human needs and domain-specific problems, ideally, interactively, and on-the-fly. Many visual analytics systems have already demonstrated the benefits of tightly integrating DR with interactive visualizations. Nevertheless, a general, structured understanding of this integration is missing. To address this, we systematically studied the visual analytics and visualization literature to investigate how analysts interact with automatic DR techniques. The results reveal seven common interaction scenarios that are amenable to interactive control such as specifying algorithmic constraints, selecting relevant features, or choosing among several DR algorithms. We investigate specific implementations of visual analysis systems integrating DR, and analyze ways that other machine learning methods have been combined with DR. Summarizing the results in a "human in the loop” process model provides a general lens for the evaluation of visual interactive DR systems. We apply the proposed model to study and classify several systems previously described in the literature, and to derive future research opportunities.

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Authors
  • Sacha, Dominik
  • Zhang, Leishi
  • Sedlmair, Michael
  • Lee, John A.
  • Peltonen, Jaakko
  • Weiskopf, Daniel
  • North, Stephen
  • Keim, Daniel A.
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Supplemental Material
Shortfacts
Category
Journal Paper
Divisions
Visualization and Data Analysis
Subjects
Informatik Sonstiges
Journal or Publication Title
IEEE Transactions on Visualization and Computer Graphics
ISSN
1077-2626
Page Range
pp. 241-250
Number
1
Volume
23
Date
2017
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