Geometry and Geography of Complex Networks
Louis Boucherie

TL;DR
This paper introduces new methods for community detection in networks, including the Adaptive Cut and Balanceness score, and explores the impact of geometry and geography on network structures and human mobility.
Contribution
It presents the Adaptive Cut technique for improved multi-level community detection and analyzes the role of geometry and geography in network organization and mobility patterns.
Findings
Adaptive Cut improves partition density and modularity in community detection.
Incorporating network geometry redefines administrative boundaries.
A universal power law describes human mobility across diverse datasets.
Abstract
Complex systems are made up of many interacting components. Network science provides the tools to analyze and understand these interactions. Community detection is a key technique in network science for uncovering the structures that shape the behavior of these networks. This thesis introduces the Adaptive Cut, a novel method that improves clustering methods by employing multi-level cuts in hierarchical dendrograms. Overcoming the limitations of traditional single-level cuts-especially in unbalanced dendrograms-the Adaptive Cut provides a multi-level cut by optimizing a Markov chain Monte Carlo with simulated annealing. In addition, we propose the Balanceness score, an information-theoretic metric that quantifies dendrogram balance and predicts the benefits of multilevel cuts. Evaluations on over 200 real and synthetic networks show significant improvements in partition density and…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Complex Systems and Time Series Analysis
