Deep Learning Approximation of Diffeomorphisms via Linear-Control
Systems
- URL: http://arxiv.org/abs/2110.12393v1
- Date: Sun, 24 Oct 2021 08:57:46 GMT
- Title: Deep Learning Approximation of Diffeomorphisms via Linear-Control
Systems
- Authors: Alessandro Scagliotti
- Abstract summary: We consider a control system of the form $dot x = sum_i=1lF_i(x)u_i$, with linear dependence in the controls.
We use the corresponding flow to approximate the action of a diffeomorphism on a compact ensemble of points.
- Score: 91.3755431537592
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper we propose a Deep Learning architecture to approximate
diffeomorphisms isotopic to the identity. We consider a control system of the
form $\dot x = \sum_{i=1}^lF_i(x)u_i$, with linear dependence in the controls,
and we use the corresponding flow to approximate the action of a diffeomorphism
on a compact ensemble of points. Despite the simplicity of the control system,
it has been recently shown that a Universal Approximation Property holds. The
problem of minimizing the sum of the training error and of a regularizing term
induces a gradient flow in the space of admissible controls. A possible
training procedure for the discrete-time neural network consists in projecting
the gradient flow onto a finite-dimensional subspace of the admissible
controls. An alternative approach relies on an iterative method based on
Pontryagin Maximum Principle for the numerical resolution of Optimal Control
problems. Here the maximization of the Hamiltonian can be carried out with an
extremely low computational effort, owing to the linear dependence of the
system in the control variables.
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