A Fractal Dimension for Measures via Persistent Homology

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Abstract

We use persistent homology in order to define a family of fractal dimensions, denoted dimPHi for each homological dimension i ≥ 0, assigned to a probability measure μ on a metric space. The case of zero-dimensional homology (i = 0) relates to work by Steele (Ann Probab 16(4): 1767–1787, 1988) studying the total length of a minimal spanning tree on a random sampling of points. Indeed, if μ is supported on a compact subset of Euclidean space ℝm for m ≥ 2, then Steele’s work implies that dimPH0(μ)=m if the absolutely continuous part of μ has positive mass, and otherwise dimPH0(μ) < i < m, though this is an open question. Our fractal dimension is defined by considering a limit, as the number of points n goes to infinity, of the total sum of the i-dimensional persistent homology interval lengths for n random points selected from μ in an i.i.d. fashion. To some measures μ, we are able to assign a finer invariant, a curve measuring the limiting distribution of persistent homology interval lengths as the number of points goes to infinity. We prove this limiting curve exists in the case of zero-dimensional homology when μ is the uniform distribution over the unit interval, and conjecture that it exists when μ is the rescaled probability measure for a compact set in Euclidean space with positive Lebesgue measure.

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Adams, H., Aminian, M., Farnell, E., Kirby, M., Mirth, J., Neville, R., … Shonkwiler, C. (2020). A Fractal Dimension for Measures via Persistent Homology. In Abel Symposia (Vol. 15, pp. 1–31). Springer. https://doi.org/10.1007/978-3-030-43408-3_1

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