We study the diffusion of influence in random multiplex networks where links
can be of r different types, and for a given content (e.g., rumor, product,
political view), each link type is associated with a content dependent
parameter ci in [0,∞] that measures the relative bias type-i links
have in spreading this content. In this setting, we propose a linear threshold
model of contagion where nodes switch state if their "perceived" proportion of
active neighbors exceeds a threshold \tau. Namely, a node connected to mi
active neighbors and ki−mi inactive neighbors via type-i links will turn
active if ∑cimi/∑ciki exceeds its threshold \tau. Under this
model, we obtain the condition, probability and expected size of global
spreading events. Our results extend the existing work on complex contagions in
several directions by i) providing solutions for coupled random networks whose
vertices are neither identical nor disjoint, (ii) highlighting the effect of
content on the dynamics of complex contagions, and (iii) showing that
content-dependent propagation over a multiplex network leads to a subtle
relation between the giant vulnerable component of the graph and the global
cascade condition that is not seen in the existing models in the literature.Comment: Revised 06/08/12. 11 Pages, 3 figure