Algorithms in convex analysis to fit lp-distance matrices
Authors
Abstract
We consider the MDS problem of fitting an l_p-distance matrix to a given dissimilarity matrix with respect to the weighted least squares loss function (STRESS). The problem is reduced to the maximization of a ratio of two norms on a finite dimensional Hilbert space. A necessary condition for a point where a local maximum is attained constitutes a nonlinear eigenproblem in terms of subgradients. Explicit expressions for the subgradients of both norms are derived, a new iterative procedure for solving the nonlinear eigenproblem is proposed, and its global convergence is proved for p in [1,2].
BibTEX Reference Entry
@article{MaMe94, author = {Rudolf Mathar and Renate Meyer}, title = "Algorithms in convex analysis to fit {$l\sb p$}-distance matrices", pages = "102-120", journal = "Journal of Multivariate Analysis", volume = "51", year = 1994, hsb = RWTH-CONV-223133, }