Hierarchies of Predominantly Connected Communities
Michael Hamann, Tanja Hartmann, Dorothea Wagner

TL;DR
This paper introduces an efficient method for constructing complete hierarchies of predominantly connected communities in networks, improving upon existing algorithms by guaranteeing hierarchy completeness and enabling analysis of multiple community structures.
Contribution
It presents a simple, efficient framework for building comprehensive hierarchies of predominantly connected communities, surpassing previous methods that required parameter tuning.
Findings
Guarantees hierarchy completeness for community clustering
Enables linear-time construction of community hierarchies containing specific communities
Allows analysis of network structure with respect to multiple communities
Abstract
We consider communities whose vertices are predominantly connected, i.e., the vertices in each community are stronger connected to other community members of the same community than to vertices outside the community. Flake et al. introduced a hierarchical clustering algorithm that finds such predominantly connected communities of different coarseness depending on an input parameter. We present a simple and efficient method for constructing a clustering hierarchy according to Flake et al. that supersedes the necessity of choosing feasible parameter values and guarantees the completeness of the resulting hierarchy, i.e., the hierarchy contains all clusterings that can be constructed by the original algorithm for any parameter value. However, predominantly connected communities are not organized in a single hierarchy. Thus, we develop a framework that, after precomputing at most …
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Management and Algorithms · Advanced Clustering Algorithms Research
