2020
DOI: 10.1103/physreve.101.032304
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Homological percolation and the Euler characteristic

Abstract: In this paper we study the connection between the phenomenon of homological percolation (the formation of "giant" cycles in persistent homology), and the zeros of the expected Euler characteristic curve. We perform an experimental study that covers four different models: site-percolation on the cubical and permutahedral lattices, the Poisson-Boolean model, and Gaussian random fields.All the models are generated on the flat torus T d , for d = 2, 3, 4. The simulation results strongly indicate that the zeros of … Show more

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Cited by 48 publications
(72 citation statements)
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“…So far, this is in accordance with the observations in classical percolation models. Since p c > 1 2 , one would by analogy expect p 0 to be an upper bound for p c . This is also what the naive heuristics suggests for our model: below p c the limit set F is totally disconnected and therefore, if V 0 (F) is naively interpreted as the 'Euler characteristic' of F (i.e., as #components -#holes), then it should be positive for all p < p c .…”
Section: Relation With Percolation Thresholdsmentioning
confidence: 99%
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“…So far, this is in accordance with the observations in classical percolation models. Since p c > 1 2 , one would by analogy expect p 0 to be an upper bound for p c . This is also what the naive heuristics suggests for our model: below p c the limit set F is totally disconnected and therefore, if V 0 (F) is naively interpreted as the 'Euler characteristic' of F (i.e., as #components -#holes), then it should be positive for all p < p c .…”
Section: Relation With Percolation Thresholdsmentioning
confidence: 99%
“…Morphometric methods to estimate thresholds in percolation models have been proposed in [20] and intensively studied in the physics literature [12,19,21,22]; see also the recent study in homological percolation [1] using topological data analysis. These methods are based on additive functionals from integral geometry, in particular the Euler characteristic, and rely on the observation that in many percolation models the expected Euler characteristic per site (as a function of the model parameter p)-which can easily be computed analytically in many models-has a zero close to the percolation threshold of the model.…”
Section: Introductionmentioning
confidence: 99%
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“…Those transitions can be seen as a generalization of percolation transitions to higher dimensional objects and were observed for the random clique complex of the Erdos-Reyni graph and for functional brain networks [21]. Later, the zeros of the Euler characteristic were also investigated independently for the models of site-percolation on lattices, the Poisson-Boolean model, and Gaussian random fields [22]. In addition to the discovery that the zeros of the Euler characteristic are good estimators for the emergence of giant shades, and that it depicts signal changes in the curvature of simplicial complexes [21], it was also observed later that the zeros of the Euler characteristic are also associated with the emergence of giant k-cycles [22].…”
Section: Introductionmentioning
confidence: 99%