GNM-NIPALS: general nonmetric-nonlinear estimation by iterative partial least squares

 

שמור ב:
מידע ביבליוגרפי
Autores: Aluja, Tomás, González, Víctor Manuel
פורמט: artículo original
סטטוס:Versión publicada
Fecha de Publicación:2014
תיאור:This paper develops GNM-NIPALS as an extension of the NM-PLS methods, which allows to quantify the qualitative variables of mixed data, by means of the reconstitution function using the first k principal components, maximizing the inertia in the plane k subspace associated with the PCA of the quantified matrix. It generalizes the NM-NIPALS algorithm in the sense that the latter only uses the first principal component in the quantification of qualitative variables. From the maximization and positivity of the correlation ratio between each qualitative variable and the reconstituted function, we have that the accumulated inertia on the k- dimensional subspace associated to the quantification function of the same range is greater than or equal to the one generated on subspaces of equal dimension, but with quantification functions of different range. With the k principal components associated to the quantified matrix, a saturated inertia analysis is performed to evaluate if a dimension k∗< k still exists, from which the accumulated inertia on the axes of equal or superior order is already explained, in which case the definitive quantification function is of lesser range (k∗). 
País:Portal de Revistas UCR
מוסד:Universidad de Costa Rica
Repositorio:Portal de Revistas UCR
שפה:Español
OAI Identifier:oai:portal.ucr.ac.cr:article/14140
גישה מקוונת:https://revistas.ucr.ac.cr/index.php/matematica/article/view/14140
Access Level:acceso abierto
מילת מפתח:NM-PLS
PCA
mixed data
quantification
k-dimensional
saturated inertia
maximal
correlation ratio
ACP
datos mixtos
cuantificación
inercia saturada
razón correlación