UESMANN: A Feed-Forward Network Capable of Learning Multiple Functions

James Finnis, Mark Neal

Research output: Chapter in Book/Report/Conference proceedingChapter

Abstract

A number of types of neural network have been shown to be useful for a wide range of tasks, and can be “trained” in a large number of ways. This paper considers how it might be possible to train and run neural networks to respond in different ways under different prevailing circumstances, achieving smooth transitions between multiple learned behaviours in a single network. This type of behaviour has been shown to be useful in a range of applications, such as maintenance of homeostasis. We introduce a novel technique for training multilayer perceptrons which improves on the transitional behaviour of many existing methods, and permits explicit training of multiple behaviours in a single network using gradient descent.
Original languageEnglish
Title of host publicationFrom Animals to Animats 14
Subtitle of host publication14th International Conference on Simulation of Adaptive Behavior, SAB 2016, Aberystwyth, UK, August 23-26, 2016, Proceedings
EditorsElio Tuci, Alexandros Giagkos, Myra Wilson, John Hallam
PublisherSpringer Nature
Pages101-112
Number of pages12
Edition1
ISBN (Electronic)9783319434889
ISBN (Print)9783319434872
Publication statusPublished - 10 Aug 2016
Event14th International Conference on Simulation of Adaptive Behaviour - Aberystwyth, United Kingdom of Great Britain and Northern Ireland
Duration: 23 Aug 201626 Aug 2016

Publication series

NameLecture Notes in Computer Science
PublisherSpringer
Volume9825
ISSN (Print)0302-9743

Conference

Conference14th International Conference on Simulation of Adaptive Behaviour
Country/TerritoryUnited Kingdom of Great Britain and Northern Ireland
CityAberystwyth
Period23 Aug 201626 Aug 2016

Keywords

  • neuromodulation
  • nerual network
  • backpropagation
  • endocrine

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