English

Stratified Space Learning: Reconstructing Embedded Graphs

Algebraic Topology 2019-09-30 v1 Computational Geometry Geometric Topology

Abstract

Many data-rich industries are interested in the efficient discovery and modelling of structures underlying large data sets, as it allows for the fast triage and dimension reduction of large volumes of data embedded in high dimensional spaces. The modelling of these underlying structures is also beneficial for the creation of simulated data that better represents real data. In particular, for systems testing in cases where the use of real data streams might prove impractical or otherwise undesirable. We seek to discover and model the structure by combining methods from topological data analysis with numerical modelling. As a first step in combining these two areas, we examine the recovery of the abstract graph GG structure, and model a linear embedding G|G| given only a noisy point cloud sample XX of G|G|.

Keywords

Cite

@article{arxiv.1909.12474,
  title  = {Stratified Space Learning: Reconstructing Embedded Graphs},
  author = {Yossi Bokor and Daniel Grixti-Cheng and Markus Hegland and Stephen Roberts and Katharine Turner},
  journal= {arXiv preprint arXiv:1909.12474},
  year   = {2019}
}

Comments

7 pages, 3 figures, accepted for MODSIM 2019 conference