Signed Networks: theory, methods, and applications
Fernando Diaz-Diaz, Elena Candellone, Miguel A. Gonzalez-Casado, Emma Fraxanet, Antoine Vendeville, Irene Ferri, and Andreia Sofia Teixeira

TL;DR
This paper offers a comprehensive overview of signed networks, covering their theoretical foundations, mathematical principles, analysis methods, dynamical processes, and practical challenges across various disciplines.
Contribution
It provides a formalized mathematical framework for signed networks, surveys key measures and models, and discusses challenges in data construction and analysis across multiple fields.
Findings
Formalization of signed graph principles
Survey of measures like clustering and centrality
Analysis of dynamics and practical challenges
Abstract
Signed networks provide a principled framework for representing systems in which interactions are not merely present or absent but qualitatively distinct: friendly or antagonistic, supportive or conflicting, excitatory or inhibitory. This polarity reshapes how we think about structure and dynamics in complex systems: a negative tie is not simply a missing positive one but a constraint that generates tension, and possibly asymmetry. Across disciplines, from sociology to neuroscience and machine learning, signed networks provide a shared language to formalise duality, balance, and opposition as integral components of system behaviour. This review provides a comprehensive and foundational summary of signed network theory. It formalises the mathematical principles of signed graphs and surveys signed-network-specific measures, including signed degree distributions, clustering, centralities,…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Action Observation and Synchronization
