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Authors:
Nenchev, Vladislav 
Document type:
Zeitschriftenartikel / Journal Article 
Title:
Layer-Stabilizing Deep Learning 
Journal:
IFAC-PapersOnLine 
Volume:
52 
Issue:
29 
Organizer (entity):
IFAC 
Conference title:
IFAC Workshop on Adaptive and Learning Control Systems (13., 2019, Winchester)) 
Conference title:
ALCOS 2019 
Venue:
Winchester, United Kingdom 
Year of conference:
2019 
Date of conference beginning:
04.12.2019 
Date of conference ending:
06.12.2019 
Year:
2019 
Pages from - to:
286-291 
Language:
Englisch 
Abstract:
Even though stability is a crucial property of dynamical systems and has been recognized as advantageous for learning, it has been often ignored in machine learning tasks. This paper presents a deep neural network learning approach that enforces layer stability during the learning process. Instead of solving the corresponding constrained optimization problem, the stability constraints are approximated based on a structured layer weight modification, and incorporated into the cost. Building upon...    »
 
ISSN:
2405-8963 
Open Access yes or no?:
Nein / No