Effects of the statistical structure of the data on the implementation of the self-monitoring neural network

Authors

  • Luis E. Huamanchumo de la Cuba Professional School of Statistical Engineering, National Engineering University. Lima, Peru https://orcid.org/0000-0002-2239-5301
  • Luis A. Sánchez Alvarado National Engineering University. Lima, Peru

DOI:

https://doi.org/10.21754/tecnia.v23i1.68

Keywords:

Principal component analysis, Hebbian algorithm, Dimensionality reduction

Abstract

The purpose of this research is to study technical aspects involved in the implementation of a Principal Component Analysis (PCA) neural network in terms of predictive capacity, generalization and accuracy in order to establish optimal criteria for the validation and implementation thereof. Our hypothesis is that the statistical structure of the data affects the optimal performance of a PCA neural network in the unsupervised context. It was demonstrated that the Hebbian algorithm at the learning phase ensures enhanced quality of network representation as it makes efficient use of information where generalized variance is large. 

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References

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[6] Huamanchumo, L.“Escala de Actitud hacia la Investigación, Estudiantes y Carreras Profesionales de Ingeniería y Ciencias de la UNI”TECNIA.Vol. 16 N° 2. Lima-Perú.2006. pp.43-50.8

Published

2013-06-01

How to Cite

[1]
L. E. Huamanchumo de la Cuba and L. A. Sánchez Alvarado, “Effects of the statistical structure of the data on the implementation of the self-monitoring neural network”, TEC, vol. 23, no. 1, pp. 67–77, Jun. 2013.

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Section

Articles