Life-long learning in incremental neural networks

p. 65-74

Résumé

This approach presents a possible solution to the stability-plasticity dilemma in incremental neural networks with a local insertion criterion. The main advantages are I) the capability of life-long learning, i.e., learning throughout the entire lifetime of a neural network, ii) stability in a stationary environment and iii) plasticity in a non-stationary environment, but only if the current knowledge does not fit the need of the task. Thus, the network structures its internal representation not like a copy of the environment but in order to fulfill the current task.

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Référence papier

Fred Henrik Hamker, « Life-long learning in incremental neural networks », CASYS, 3 | 1999, 65-74.

Référence électronique

Fred Henrik Hamker, « Life-long learning in incremental neural networks », CASYS [En ligne], 3 | 1999, mis en ligne le 01 July 2024, consulté le 20 September 2024. URL : http://popups.lib.uliege.be/1373-5411/index.php?id=804

Auteur

Fred Henrik Hamker

Technische Universitiit Ilmenau, Neuroinformatik, D-98684 Ilmenau, Germany

Droits d'auteur

CC BY-SA 4.0 Deed