Visualizing structural balance in signed networks
Edoardo Galimberti, Chiara Madeddu, Francesco Bonchi, Giancarlo Ruffo

TL;DR
This paper introduces Structural-balance-viz, a visualization method for signed networks that highlights structural balance and polarization using spectral computations, edge coloring, and bundling, aiding analysis of network properties.
Contribution
The paper presents a novel visualization technique specifically designed for signed networks to depict structural balance and polarization, leveraging spectral methods and visual cues.
Findings
Effectively visualizes balance and polarization in signed networks.
Identifies two factions based on node polarization.
Validated on synthetic and real-world political data.
Abstract
Network visualization has established as a key complement to network analysis since the large variety of existing network layouts are able to graphically highlight different properties of networks. However, signed networks, i.e., networks whose edges are labeled as friendly (positive) or antagonistic (negative), are target of few of such layouts and none, to our knowledge, is able to show structural balance, i.e., the tendency of cycles towards including an even number of negative edges, which is a well-known theory for studying friction and polarization. In this work we present Structural-balance-viz: a novel visualization method showing whether a connected signed network is balanced or not and, in the latter case, how close the network is to be balanced. Structural-balance-viz exploits spectral computations of the signed Laplacian matrix to place network's nodes in a Cartesian…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mental Health Research Topics
