Litcius/Paper detail

Deep learning via dynamical systems: An approximation perspective

Qianxiao Li, Ting Lin, Zuowei Shen

2022Journal of the European Mathematical Society69 citationsDOIOpen Access PDF

Abstract

We build on the dynamical systems approach to deep learning, where deep residual networks are idealized as continuous-time dynamical systems, from the approximation perspective. In particular, we establish general sufficient conditions for universal approximation using continuous-time deep residual networks, which can also be understood as approximation theories in L^p using flow maps of dynamical systems. In specific cases, rates of approximation in terms of the time horizon are also established. Overall, these results reveal that composition function approximation through flow maps presents a new paradigm in approximation theory and contributes to building a useful mathematical framework to investigate deep learning.

Topics & Concepts

MathematicsPerspective (graphical)Dynamical systems theoryAlgebra over a fieldCalculus (dental)Applied mathematicsPure mathematicsGeometryQuantum mechanicsDentistryPhysicsMedicineNeural Networks and ApplicationsModel Reduction and Neural NetworksSeismology and Earthquake Studies