Learning Algorithm with Nonlinear Map Optimization for Neural Network

Recently, machine learning has been attracting attention. Machine learning is mainly realized by the learning of artificial neural networks. Various learning methods have been proposed; however, the learning methods are based on gradient methods. On the other hand, swarm intelligence (SI) algorithms...

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Bibliographic Details
Published inJournal of Signal Processing Vol. 22; no. 4; pp. 153 - 156
Main Authors Jin'no, Kenya, Hoshino, Yuki
Format Journal Article
LanguageEnglish
Published Tokyo Research Institute of Signal Processing, Japan 25.07.2018
Japan Science and Technology Agency
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ISSN1342-6230
1880-1013
1880-1013
DOI10.2299/jsp.22.153

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Summary:Recently, machine learning has been attracting attention. Machine learning is mainly realized by the learning of artificial neural networks. Various learning methods have been proposed; however, the learning methods are based on gradient methods. On the other hand, swarm intelligence (SI) algorithms have been attracting attention in the optimization field. Generally speaking, SI algorithms have a large computation cost. Therefore, there are few cases of SI algorithms being applied to machine learning. In this paper, we propose a novel learning algorithm for an artificial neural network which applies our proposed nonlinear map optimization (NMO) method. NMO consists of some simple particles which are driven by a simple nonlinear map. NMO can be classified as an SI algorithm. However, it has only a small computation cost. Therefore, NMO can be applied to a learning algorithm for an artificial neural network. In this paper, we introduce NMO, and a small learning simulation is carried out to confirm the performance of our learning method.
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ISSN:1342-6230
1880-1013
1880-1013
DOI:10.2299/jsp.22.153