Deep Invertible Approximation of Topologically Rich Maps between Manifolds
Michael Puthawala, Matti Lassas, Ivan Dokmanic, Pekka Pankka, Maarten, de Hoop

TL;DR
This paper introduces a novel neural network architecture that universally approximates maps between topologically complex manifolds, enabling stable inverses and applications in group invariance and molecular imaging.
Contribution
The paper proposes a new network form $\
Findings
The architecture can approximate local diffeomorphisms between manifolds with changing topology.
Multivalued inverses can be computed without losing universality.
Application to learning group-invariant functions and molecular imaging is demonstrated.
Abstract
How can we design neural networks that allow for stable universal approximation of maps between topologically interesting manifolds? The answer is with a coordinate projection. Neural networks based on topological data analysis (TDA) use tools such as persistent homology to learn topological signatures of data and stabilize training but may not be universal approximators or have stable inverses. Other architectures universally approximate data distributions on submanifolds but only when the latter are given by a single chart, making them unable to learn maps that change topology. By exploiting the topological parallels between locally bilipschitz maps, covering spaces, and local homeomorphisms, and by using universal approximation arguments from machine learning, we find that a novel network of the form , where is an injective…
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Taxonomy
TopicsTopological and Geometric Data Analysis
