Principles of artificial neural networks: hardware and software
DOI:
https://doi.org/10.54886/scire.v1i1.1036Abstract
Neural networks schematically model the hardware structure of our brain to reproduce its computational abilities. These parallel, distributed and adaptative processing systems are able to learn from experience, working on environmental data and by using numerical algorithms. This paper is an introduction to artificial neural networks. Firstly, basic features of the neuron model, network architecture and learning algorithms are presented. Secondly, the best known models of neural networks are described. Lastly, the different procedures for developing an artificial neural system are discussed, together with their possible applications to real world problems.Downloads
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 1995 Authors retain their copyright, but transfer the exploitation rights (reproduction, distribution, public communication and transformation) to the journal in a non-exclusive way and guarantee the right to the first publication of their work to the journal, which will be simultaneously subjected to the license CC BY-NC-ND. Authors take whole personal responsibility on fulfilling all the appropiate ethical codes and laws, and obtaining all the necessary copyright permissions regarding their articles. Institutional and self- archiving is allowed and encouraged.
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
© 1996- . Authors retain their copyright, but transfer the exploitation rights (reproduction, distribution, public communication and transformation) to the journal in a non-exclusive way and guarantee the right to the first publication of their work to the journal, which will be simultaneously subjected to the license CC BY-NC-ND. Authors take whole personal responsibility on fulfilling all the appropiate ethical codes and laws, and obtaining all the necessary copyright permissions regarding their articles. Institutional and self- archiving is allowed and encouraged.