Homology-Preserving Dimensionality Reduction Via Manifold Landmarking And Tearing

Homology-Preserving Dimensionality Reduction Via Manifold Landmarking And Tearing
Lin Yan, Yaodong Zhao, Paul Rosen, Carlos Scheidegger, and Bei Wang
Visualization in Data Science (VDS), 2018

Abstract

Dimensionality reduction is an integral part of data visualization. It is a process that obtains a structure preserving low-dimensional representation of the high-dimensional data. Two common criteria can be used to achieve a dimensionality reduction: distance preservation and topology preservation. Inspired by recent work in topological data analysis, we are on the quest for a dimensionality reduction technique that achieves the criterion of homology preservation, a generalized version of topology preservation. Specifically, we are interested in using topology-inspired manifold landmarking and manifold tearing to aid such a process and evaluate their effectiveness.

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Citation

Lin Yan, Yaodong Zhao, Paul Rosen, Carlos Scheidegger, and Bei Wang. Homology-Preserving Dimensionality Reduction Via Manifold Landmarking And Tearing. Visualization in Data Science (VDS), 2018.

Bibtex


@inproceedings{yan2018homology,
  title = {Homology-Preserving Dimensionality Reduction via Manifold Landmarking and
    Tearing},
  author = {Yan, Lin and Zhao, Yaodong and Rosen, Paul and Scheidegger, Carlos and Wang,
    Bei},
  booktitle = {Visualization in Data Science (VDS)},
  year = {2018},
  abstract = {Dimensionality reduction is an integral part of data visualization. It is a
    process that obtains a structure preserving low-dimensional representation of the
    high-dimensional data. Two common criteria can be used to achieve a dimensionality
    reduction: distance preservation and topology preservation. Inspired by recent work in
    topological data analysis, we are on the quest for a dimensionality reduction technique
    that achieves the criterion of homology preservation, a generalized version of topology
    preservation. Specifically, we are interested in using topology-inspired manifold
    landmarking and manifold tearing to aid such a process and evaluate their effectiveness.}
}