2022
DOI: 10.48550/arxiv.2202.01725
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RipsNet: a general architecture for fast and robust estimation of the persistent homology of point clouds

Abstract: The use of topological descriptors in modern machine learning applications, such as Persistence Diagrams (PDs) arising from Topological Data Analysis (TDA), has shown great potential in various domains. However, their practical use in applications is often hindered by two major limitations: the computational complexity required to compute such descriptors exactly, and their sensitivity to even low-level proportions of outliers. In this work, we propose to bypass these two burdens in a data-driven setting by en… Show more

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