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Paper #154

Título:
Unfolding a symmetric matrix
Autores:
John C. Gower y Michael Greenacre
Fecha:
Enero 1996
Resumen:
Graphical displays which show inter--sample distances are important for the interpretation and presentation of multivariate data. Except when the displays are two--dimensional, however, they are often difficult to visualize as a whole. A device, based on multidimensional unfolding, is described for presenting some intrinsically high--dimensional displays in fewer, usually two, dimensions. This goal is achieved by representing each sample by a pair of points, say $R_i$ and $r_i$, so that a theoretical distance between the $i$-th and $j$-th samples is represented twice, once by the distance between $R_i$ and $r_j$ and once by the distance between $R_j$ and $r_i$. Self--distances between $R_i$ and $r_i$ need not be zero. The mathematical conditions for unfolding to exhibit symmetry are established. Algorithms for finding approximate fits, not constrained to be symmetric, are discussed and some examples are given.
Palabras clave:
Dimensionality reduction, distances, graphics, multidimensional scaling, symmetric matrices, unfolding
Códigos JEL:
C19, C88
Área de investigación:
Estadística, Econometría y Métodos Cuantitativos
Publicado en:
Journal of Classification, 13, (1996), pp. 81-105

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