Least squares algorithms for constructing constrained ultrametric and additive tree representations of symmetric proximity data.

01 January 1987

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A mathematical programming algorithm is developed for fitting ultrametric or additive trees to proximity data where external constraints are imposed on the topology of the tree. The two procedures minimize a least squares loss function. The method is illustrated on both synthetic and real data. A constrained ultrametric tree analysis was performed on similarities between 32 subjects based on preferences for ten odors, while a constrained additive tree analysis was carried out on some proximity data between kinship terms. Finally, some extension of the methodology to other tree fitting procedures are mentioned.