Roles of Ties in Spreading
Ai-Xiang Cui, Zimo Yang, Tao Zhou

TL;DR
This paper investigates how strong and weak ties differently influence spreading processes in networks, showing that strong ties increase infected density while weak ties accelerate spreading speed, using a new edge strength measure.
Contribution
It introduces a local topology-based edge strength measure and demonstrates its impact on spreading dynamics through experiments on real networks.
Findings
Strong ties increase infected density.
Weak ties enhance spreading speed.
Edge strength influences spreading outcomes.
Abstract
Background: Controlling global epidemics in the real world and accelerating information propagation in the artificial world are of great significance, which have activated an upsurge in the studies on networked spreading dynamics. Lots of efforts have been made to understand the impacts of macroscopic statistics (e.g., degree distribution and average distance) and mesoscopic structures (e.g., communities and rich clubs) on spreading processes while the microscopic elements are less concerned. In particular, roles of ties are not yet clear to the academic community. Methodology/Principle Findings: Every edges is stamped by its strength that is defined solely based on the local topology. According to a weighted susceptible-infected-susceptible model, the steady-state infected density and spreading speed are respectively optimized by adjusting the relationship between edge's strength and…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Opportunistic and Delay-Tolerant Networks
