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Assembler Encoding : a new Artificial Neural Network encoding method

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Warianty tytułu
PL
Kodowanie Asemblerowe : nowa metoda kodowania sieci neuronowych
Języki publikacji
EN
Abstrakty
EN
The main goal of the paper is to outline a new Artificial Neural Network (ANN) encoding method called Assembler Encoding (AE). In AE, ANN is encoded in the form of a program (Assembler Encoding Program - AEP) of linear organization and of a structure similar to the structure of a simple assembler program. The task of AEP is to create the so-called Network Definition Matrix (NDM) including the whole information necessary to produce ANN. To create AEPs, and in consequence ANNs, genetic algorithms are used.
PL
Głównym celem artykułu jest przedstawienie Kodowania Asemblerowego czyli nowej metody kodowania sztucznych sieci neuronowych. W Kodowaniu Asemblerowym sieć neuronowa jest zakodowana w postaci programu (AEP - Assembler Encoding Program) o liniowej organizacji i o strukturze podobnej do struktury prostego programu asemblerowego. Zadaniem AEP jest stworzenie tzw. Macierzy Definicji Sieci (NDM - Network Definition Matrix) zawierającej całą informację potrzebną do stworzenia sieci. Tworzenie AEP i w konsekwencji sieci neuronowych odbywa się z wykorzystaniem technik ewolucyjnych.
Rocznik
Strony
395--429
Opis fizyczny
Bibliogr. 33 poz., tab., wykr.
Twórcy
autor
  • Naval University, 81-103 Gdynia, ul. Śmidowicza 69
Bibliografia
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  • [21] M. Potter, The Design and Analysis of a Computational Model of Cooperative Coevolution, PhD thesis, George Mason University, Fairfax, Virginia, 1997.
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  • [26] T. Praczyk, Procedure application in Assembler Encoding, Archives of Control Science, vol. 17 (LIII), no. 1, 2007, 71-91.
  • [27] T. Praczyk, Forming dynamical, self - organizing neural networks by means of assembler encoding (in review).
  • [28] T. Praczyk, Using genetic algorithms and assembler encoding to generate neural networks, Computing and Informatics, 2008 (in press).
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BWA9-0022-0032
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