Compartir
Título
CenetBiplot: a new proposal of sparse and orthogonal biplots methods by means of elastic net CSVD
Autor(es)
Palabras clave
Sparse Biplot
Constrained Singular Value Decomposition
Orthogonality
Sparsity
Elastic net
HJ-Biplot
Fecha de publicación
2023
Editor
Springer [Commercial Publisher]
Citación
González-García, N., Nieto-Librero, A. B., & Galindo-Villardón, P. (2023). C enet Biplot: a new proposal of sparse and orthogonal biplots methods by means of elastic net CSVD. Advances in Data Analysis and Classification, 1-15.
Resumen
[EN] In this work, a new mathematical algorithm for sparse and orthogonal constrained biplots, called CenetBiplots, is proposed. Biplots provide a joint representation of observations and variables of a multidimensional matrix in the same reference system. In this subspace the relationships between them can be interpreted in terms of geometric elements. CenetBiplots projects a matrix onto a low-dimensional space generated simultaneously by sparse and orthogonal principal components. Sparsity is desired to select variables automatically, and orthogonality is necessary to keep the geometrical properties that ensure the biplots graphical interpretation. To this purpose, the present study focuses on two different objectives: 1) the extension of constrained singular value decomposition to incorporate an elastic net sparse constraint (CenetSVD), and 2) the implementation of CenetBiplots using CenetSVD. The usefulness of the proposed methodologies for analysing high-dimensional and low-dimensional matrices is shown. Our method is implemented in R software and available for download from https://github.com/ananieto/SparseCenetMA
URI
ISSN
1862-5347
DOI
10.1007/S11634-021-00468-1
Versión del editor
Aparece en las colecciones
Files in questo item
Tamaño:
1.366Mb
Formato:
Adobe PDF
Descripción:
Artículo













