Rumors with personality: A differential and agent-based model of information spread through networks
Abstract
We constructed the “ISTK” model to approximate the spread of viral information—a rumor—
through a given (social) network. Initially, we used a set of ordinary differential equations to assess
the spread of a rumor in face-to-face interactions in a homogenous population. Our second model
translated this system into an equivalent stochastic agent-based model. We then incorporated a
network based off of a representative Facebook dataset. Our results showed that incorporating
the structure of a network alters the behavior of the rumor as it spreads across the population,
while preserving steady states. Our third model considered features: demographic information that
characterized individuals in our representative population. We also generated a feature vector for
the rumor in order to simulate its “personality.” An increase in the average similarity of the rumor
to the population resulted in increased propagation through the network. However, the addition of
feature vectors prevents the rumor from saturating the network. Our agent-based, feature-equipped
ISTK model provides a more realistic mechanism to account for social behaviors, thus allowing for a
more precise model of the dynamics of rumor spread through networks.