Comparative Study for Inference of Hidden Classes in Stochastic Block Models
Zhang, Pan, Krzakala, Florent, Reichardt, Jörg, Zdeborová, Lenka
Inference of hidden classes in stochastic block model is a classical problem with important applications. Most commonly used methods for this problem involve na\"{\i}ve mean field approaches or heuristic spectral methods. Recently, belief propagation was proposed for this problem. In this contribution we perform a comparative study between the three methods on synthetically created networks. We show that belief propagation shows much better performance when compared to na\"{\i}ve mean field and spectral approaches. This applies to accuracy, computational efficiency and the tendency to overfit the data.
Jul-13-2012