2020
DOI: 10.48550/arxiv.2007.14681
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Expansion and Flooding in Dynamic Random Networks with Node Churn

Abstract: We study expansion and information diffusion in dynamic networks, that is in networks in which nodes and edges are continuously created and destroyed. We consider information diffusion by flooding, the process by which, once a node is informed, it broadcasts its information to all its neighbors.We study models in which the network is sparse, meaning that it has O(n) edges, where n is the number of nodes, and in which edges are created randomly, rather than according to a carefully designed distributed algorith… Show more

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“…Adaptive network models (for instance, SIS-dynamics [161] alongside contactswitching [23,24]), have dynamic node-properties that evolve with time and guide network evolution, a commonality with THVMs. Networks with node-growth and node-removal [162][163][164][165] have dynamic node-properties (degree-values as opposed to hidden variables) that influence link-formation. In the fitness model of growing networks [12], static HVs and dynamic degrees both govern connection probabilities.…”
Section: Related Workmentioning
confidence: 99%
“…Adaptive network models (for instance, SIS-dynamics [161] alongside contactswitching [23,24]), have dynamic node-properties that evolve with time and guide network evolution, a commonality with THVMs. Networks with node-growth and node-removal [162][163][164][165] have dynamic node-properties (degree-values as opposed to hidden variables) that influence link-formation. In the fitness model of growing networks [12], static HVs and dynamic degrees both govern connection probabilities.…”
Section: Related Workmentioning
confidence: 99%