DTM-based filtrations

11/12/2018
by   Hirokazu Anai, et al.
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Despite strong stability properties, the persistent homology of filtrations classically used in Topological Data Analysis, such as, e.g. thě Cech or Vietoris-Rips filtrations, are very sensitive to the presence of outliers in the data from which they are computed. In this paper, we introduce and study a new family of filtrations, the DTM-filtrations, built on top of point clouds in the Euclidean space which are more robust to noise and outliers. The approach adopted in this work relies on the notion of distance-to-measure functions, and extends some previous work on the approximation of such functions.

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