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Real Time Dynamic Neural Network

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IIT-01-006A.pdf (752.6Kb)
Autor
Sánchez Miralles, Alvaro
Sanz Bobi, Miguel Ángel
Estado
info:eu-repo/semantics/draft
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Resumen
This paper describes a new neural network able to adapt itself, both its parameters and its structure, to a data set in real-time conditions. The adaptation is based on a non-supervised learning procedure. The new neural network can automatically create interconnections between neurons using any generic activation function. Still another important feature of this new neural network is the use of few neurons to make a good prediction using a reduced number of examples. This is relevant in order to make fast calculations using few resources in real-time applications. Some examples using this neural network are included in order to demonstrate its good performance. These examples use elliptical Gausian functions as domains for the neurons.
 
This paper describes a new neural network able to adapt itself, both its parameters and its structure, to a data set in real-time conditions. The adaptation is based on a non-supervised learning procedure. The new neural network can automatically create interconnections between neurons using any generic activation function. Still another important feature of this new neural network is the use of few neurons to make a good prediction using a reduced number of examples. This is relevant in order to make fast calculations using few resources in real-time applications. Some examples using this neural network are included in order to demonstrate its good performance. These examples use elliptical Gausian functions as domains for the neurons.
 
URI
http://hdl.handle.net/11531/14142
Real Time Dynamic Neural Network
Palabras Clave
real-time neural network, neural network self-adaptation, dynamic neural network (DNN), topologies representing network (TRN), elliptical Gaussian domain of neurons, radial basis function network (RBFN), probability density function (PDF)
real-time neural network, neural network self-adaptation, dynamic neural network (DNN), topologies representing network (TRN), elliptical Gaussian domain of neurons, radial basis function network (RBFN), probability density function (PDF)
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Repositorio de la Universidad Pontificia Comillas copyright © 2015  Desarrollado con DSpace Software
Contacto | Sugerencias