An Approximation Theory for Metric Space-Valued Functions With A View Towards Deep Learning
Anastasis Kratsios, Chong Liu, Matti Lassas, Maarten V. de Hoop, Ivan, Dokmani\'c

TL;DR
This paper develops a universal approximation framework for continuous functions between arbitrary Polish metric spaces using elementary Euclidean functions, with implications for deep learning and geometric data analysis.
Contribution
It introduces a novel randomization approach to approximate metric space-valued functions, extending prior work to more general spaces and structures, including neural network-based methods.
Findings
Universal approximation for metric space-valued functions established.
Quantitative guarantees for maps with combinatorial structure.
Connections to neural networks and geometric deep learning.
Abstract
Motivated by the developing mathematics of deep learning, we build universal functions approximators of continuous maps between arbitrary Polish metric spaces and using elementary functions between Euclidean spaces as building blocks. Earlier results assume that the target space is a topological vector space. We overcome this limitation by ``randomization'': our approximators output discrete probability measures over . When and are Polish without additional structure, we prove very general qualitative guarantees; when they have suitable combinatorial structure, we prove quantitative guarantees for H\"{o}lder-like maps, including maps between finite graphs, solution operators to rough differential equations between certain Carnot groups, and continuous non-linear operators between Banach spaces arising in…
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Taxonomy
TopicsTopological and Geometric Data Analysis
