Jerarca: Efficient Analysis of Complex Networks Using Hierarchical Clustering
Rodrigo Aldecoa, Ignacio Mar\'in

TL;DR
Jerarca is a software suite that enhances the efficiency of hierarchical clustering in complex network analysis, providing faster computations, multiple clustering strategies, and compatibility with visualization tools.
Contribution
It introduces new algorithms and improvements for hierarchical clustering of biological networks, enabling faster analysis and better partitioning compared to previous methods.
Findings
Significantly faster clustering computations.
Multiple algorithms for distance calculation and clustering.
Automatic optimal partitioning of hierarchical trees.
Abstract
Background: How to extract useful information from complex biological networks is a major goal in many fields, especially in genomics and proteomics. We have shown in several works that iterative hierarchical clustering, as implemented in the UVCluster program, is a powerful tool to analyze many of those networks. However, the amount of computation time required to perform UVCluster analyses imposed significant limitations to its use. Methodology/Principal Findings: We describe the suite Jerarca, designed to efficiently convert networks of interacting units into dendrograms by means of iterative hierarchical clustering. Jerarca is divided into three main sections. First, weighted distances among units are computed using up to three different approaches: a more efficient version of UVCluster and two new, related algorithms called RCluster and SCluster. Second, Jerarca builds…
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