English

Sparse Filtered Nerves

Algebraic Topology 2019-04-25 v2

Abstract

Given a point cloud PP in Euclidean space and a positive parameter tt we can consider the tt-neighborhood PtP^{t} of PP consisting of points at distance less than tt to PP. Homology of PtP^{t} gives information about components, holes, voids etc. in PtP^{t}. The idea of persistent homology is that it may happen that we are interested in some of holes in the spaces PtP^t that are not detected simultaneously in homology for a single value of tt, but where each of these holes is detected for tt in a wide range. When the dimension of the ambient Euclidean space is small, persistent homology is efficiently computed by the α\alpha-complex. For dimension bigger than three this becomes resource consuming. Don Sheehy discovered that there exists a filtered simplicial complex whose size depends linearly on the cardinality of PP and whose persistent homology is an approximation of the persistent homology of the filtered topological space {Pt}t0\{P^{t}\}_{t \ge 0}. In this paper we pursue Sheehy's sparsification approach and give a more general approach to sparsification of filtered simplicial complexes computing the homology of filtered spaces of the form {Pt}t0\{P^{t}\}_{t \ge 0} and more generally to sparsification of filtered Dowker nerves. To our best knowledge, this is the first approach to sparsification of general Dowker nerves.

Keywords

Cite

@article{arxiv.1810.02149,
  title  = {Sparse Filtered Nerves},
  author = {Nello Blaser and Morten Brun},
  journal= {arXiv preprint arXiv:1810.02149},
  year   = {2019}
}