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A model and algorithm for multidimensional scaling with external constraints on the distances
Authors:Ingwer Borg  James C. Lingoes
Affiliation:(1) Rheinisch-Westfälische Technische Hochschule, USA;(2) The University of Michigan, 1005 North University Building, 48109 Ann Arbor, Michigan
Abstract:A method for externally constraining certain distances in multidimensional scaling configurations is introduced and illustrated. The approach defines an objective function which is a linear composite of the loss function of the point configurationX relative to the proximity dataP and the loss ofX relative to a pseudo-data matrixR. The matrixR is set up such that the side constraints to be imposed onX's distances are expressed by the relations amongR's numerical elements. One then uses a double-phase procedure with relative penalties on the loss components to generate a constrained solutionX. Various possibilities for constructing actual MDS algorithms are conceivable: the major classes are defined by the specification of metric or nonmetric loss for data and/or constraints, and by the various possibilities for partitioning the matricesP andR. Further generalizations are introduced by substitutingR by a set ofR matrices,Ri,i=1, ...r, which opens the way for formulating overlapping constraints as, e.g., in patterns that are both row- and column-conditional at the same time.
Keywords:constrained multidimensional scaling  hypothesis testing  geometric models  nonlinear optimization
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