Clustering with shallow trees
classification
❄️ cond-mat.dis-nn
cs.DSq-bio.QM
keywords
methodclusteringinterpolationtreesaffinityalgorithmallowsanalyze
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We propose a new method for hierarchical clustering based on the optimisation of a cost function over trees of limited depth, and we derive a message--passing method that allows to solve it efficiently. The method and algorithm can be interpreted as a natural interpolation between two well-known approaches, namely single linkage and the recently presented Affinity Propagation. We analyze with this general scheme three biological/medical structured datasets (human population based on genetic information, proteins based on sequences and verbal autopsies) and show that the interpolation technique provides new insight.
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