Abstract
Abstract
We consider a model of binary opinion dynamics where one opinion is inherently “superior” than the other, and social agents exhibit a “bias” toward the superior alternative. Specifically, it is assumed that an agent updates its choice to the superior alternative with probability α > 0 irrespective of its current opinion and opinions of other agents. With probability
$1-\alpha$
, it adopts majority opinion among two randomly sampled neighbors and itself. We are interested in the time it takes for the network to converge to a consensus on the superior alternative. In a complete graph of size n, we show that irrespective of the initial configuration of the network, the average time to reach consensus scales as
$\Theta(n\,\log n)$
when the bias parameter α is sufficiently high, that is,
$\alpha \gt \alpha_c$
where α
c
is a threshold parameter that is uniquely characterized. When the bias is low, that is, when
$\alpha \in (0,\alpha_c]$
, we show that the same rate of convergence can only be achieved if the initial proportion of agents with the superior opinion is above certain threshold
$p_c(\alpha)$
. If this is not the case, then we show that the network takes
$\Omega(\exp(\Theta(n)))$
time on average to reach consensus.
Publisher
Cambridge University Press (CUP)
Subject
Industrial and Manufacturing Engineering,Management Science and Operations Research,Statistics, Probability and Uncertainty,Statistics and Probability