Bibcode
DOI
Serra-Ricart, Miquel; Calbet, Xavier; Garrido, Lluis; Gaitan, Vicens
Referencia bibliográfica
Astronomical Journal (ISSN 0004-6256), vol. 106, no. 4, p. 1685-1695.
Fecha de publicación:
10
1993
Número de citas
28
Número de citas referidas
25
Descripción
We present a new method based on artificial neural networks trained with
multiseed backpropagation, for displaying an n-dimensional distribution
in a projected space of one, two, or three dimensions. As principal
component analysis (PCA) the proposed method is useful for extracting
information on the structure of the data set, but unlike the PCA the
transformation between the original distribution and the projected one
is not restricted to be linear. Artificial examples and real
astronomical applications are presented in order to show the reliability
and potential of the method for the analysis of large astronomical data
sets.