The Adaptive Mean-Linkage Algorithm: A Bottom-Up Hierarchical Cluster Technique
Abstract
In this paper a variant of the classical hierarchical cluster analysis is reported. This agglomerative (bottom-up) cluster technique is referred to as the Adaptive Mean-Linkage Algorithm. It can be interpreted as a linkage algorithm where the value of the threshold is conveniently up-dated at each interaction. The superiority of the adaptive clustering with respect to the average-linkage algorithm follows because it achieves a good compromise on threshold values: Thresholds based on the cut-off distance are sufficiently small to assure the homogeneity and also large enough to guarantee at least a pair of merging sets. This approach is applied to a set of possible substituents in a chemical series.
Cite
@article{arxiv.1502.02512,
title = {The Adaptive Mean-Linkage Algorithm: A Bottom-Up Hierarchical Cluster Technique},
author = {H. M. de Oliveira},
journal= {arXiv preprint arXiv:1502.02512},
year = {2015}
}
Comments
4 pages, 2 figures, 2 tables. Congresso Brasileiro de Automatica CBA, Natal, RN, Brazil, 2002