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  4. Dimension reduction in recurrent networks by canonicalization
 
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Dimension reduction in recurrent networks by canonicalization

Journal
Journal of Geometric Mechanics
Type
journal article
Date Issued
2021-12
Author(s)
Lyudmila Grigoryeva  orcid-logo
Ortega Lahuerta, Juan-Pablo  
DOI
10.3934/jgm.2021028
Abstract
Many recurrent neural network machine learning paradigms can be formulated using state-space representations. The classical notion of canonical state-space realization is adapted in this paper to accommodate semi-infinite inputs so that it can be used as a dimension reduction tool in the recurrent networks setup. The so-called input forgetting property is identified as the key hypothesis that guarantees the existence and uniqueness (up to system isomorphisms) of canonical realizations for causal and time-invariant input/output systems with semi-infinite inputs. Additionally, the notion of optimal reduction coming from the theory of symmetric Hamiltonian systems is implemented in our setup to construct canonical realizations out of input forgetting but not necessarily canonical ones. These two procedures are studied in detail in the framework of linear fading memory input/output systems. {Finally, the notion of implicit reduction using reproducing kernel Hilbert spaces (RKHS) is introduced which allows, for systems with linear readouts, to achieve dimension reduction without the need to actually compute the reduced spaces introduced in the first part of the paper.
Language
English
Refereed
Yes
Publisher
AIMS
Volume
13
Number
4
Start page
647
End page
677
Official URL
https://www.aimsciences.org/article/doi/10.3934/jgm.2021028
URL
https://www.alexandria.unisg.ch/handle/20.500.14171/109667
Subject(s)

other research area

computer science

statistics

Division(s)

SEPS - School of Econ...

MS - Faculty of Mathe...

Eprints ID
269594
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