English

ExplorerTree: a focus+context exploration approach for 2D embeddings

Graphics 2021-06-23 v2

Abstract

In exploratory tasks involving high-dimensional datasets, dimensionality reduction (DR) techniques help analysts to discover patterns and other useful information. Although scatter plot representations of DR results allow for cluster identification and similarity analysis, such a visual metaphor presents problems when the number of instances of the dataset increases, resulting in cluttered visualizations. In this work, we propose a scatter plot-based multilevel approach to display DR results and address clutter-related problems when visualizing large datasets, together with the definition of a methodology to use focus+context interaction on non-hierarchical embeddings. The proposed technique, called ExplorerTree, uses a sampling selection technique on scatter plots to reduce visual clutter and guide users through exploratory tasks. We demonstrate ExplorerTree's effectiveness through a use case, where we visually explore activation images of the convolutional layers of a neural network. Finally, we also conducted a user experiment to evaluate ExplorerTree's ability to convey embedding structures using different sampling strategies.

Keywords

Cite

@article{arxiv.2106.10592,
  title  = {ExplorerTree: a focus+context exploration approach for 2D embeddings},
  author = {Wilson E. Marcílio-Jr and Danilo M. Eler and Fernando V. Paulovich and José F. Rodrigues-Jr and Almir O. Artero},
  journal= {arXiv preprint arXiv:2106.10592},
  year   = {2021}
}
R2 v1 2026-06-24T03:23:36.670Z