Axiomatic Construction of Hierarchical Clustering in Asymmetric Networks
Gunnar Carlsson, Facundo M\'emoli, Alejandro Ribeiro, Santiago, Segarra

TL;DR
This paper develops an axiomatic framework for hierarchical clustering in directed networks, introducing new methods and algorithms that respect data asymmetry and demonstrate stability on real-world economic and migration data.
Contribution
It proposes a novel axiomatic approach to hierarchical clustering in asymmetric networks, including reciprocal, nonreciprocal, and quasi-clustering methods, with algorithms and stability analysis.
Findings
Introduces axiomatic methods for asymmetric hierarchical clustering.
Develops algorithms based on min-max dioid algebra.
Demonstrates stability of methods on real-world networks.
Abstract
This paper considers networks where relationships between nodes are represented by directed dissimilarities. The goal is to study methods for the determination of hierarchical clusters, i.e., a family of nested partitions indexed by a connectivity parameter, induced by the given dissimilarity structures. Our construction of hierarchical clustering methods is based on defining admissible methods to be those methods that abide by the axioms of value - nodes in a network with two nodes are clustered together at the maximum of the two dissimilarities between them - and transformation - when dissimilarities are reduced, the network may become more clustered but not less. Several admissible methods are constructed and two particular methods, termed reciprocal and nonreciprocal clustering, are shown to provide upper and lower bounds in the space of admissible methods. Alternative clustering…
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Taxonomy
TopicsComplex Network Analysis Techniques
