Viral Marketing On Configuration Model
Bartlomiej Blaszczyszyn (INRIA Paris-Rocquencourt), Kumar Gaurav, (INRIA Paris-Rocquencourt, UPMC)

TL;DR
This paper analyzes influence spread in a configuration model where vertices influence a subset of neighbors, providing conditions for large influence components and characterizing influential pioneers using fluid limit techniques.
Contribution
It introduces a model with influence transmission limitations, derives conditions for large influence components, and characterizes influential pioneers using a novel duality and fluid limit analysis.
Findings
Conditions for influence to reach a large fraction of vertices.
Asymptotic size of the big influenced component.
Characterization of good pioneers and their influence potential.
Abstract
We consider propagation of influence on a Configuration Model, where each vertex can be influenced by any of its neighbours but in its turn, it can only influence a random subset of its neighbours. Our (enhanced) model is described by the total degree of the typical vertex, representing the total number of its neighbours and the transmitter degree, representing the number of neighbours it is able to influence. We give a condition involving the joint distribution of these two degrees, which if satisfied would allow with high probability the influence to reach a non-negligible fraction of the vertices, called a big (influenced) component, provided that the source vertex is chosen from a set of good pioneers. We show that asymptotically the big component is essentially the same, regardless of the good pioneer we choose, and we explicitly evaluate the asymptotic relative size of this…
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Taxonomy
TopicsBusiness Strategy and Innovation · Complex Network Analysis Techniques · Consumer Market Behavior and Pricing
