3 research outputs found
Efficient inference in stochastic block models with vertex labels
We study the stochastic block model with two communities where vertices
contain side information in the form of a vertex label. These vertex labels may
have arbitrary label distributions, depending on the community memberships. We
analyze a linearized version of the popular belief propagation algorithm. We
show that this algorithm achieves the highest accuracy possible whenever a
certain function of the network parameters has a unique fixed point. Whenever
this function has multiple fixed points, the belief propagation algorithm may
not perform optimally. We show that increasing the information in the vertex
labels may reduce the number of fixed points and hence lead to optimality of
belief propagation