Title :
Large scale inference in the Infinite Relational Model: Gibbs sampling is not enough
Author :
Albers, Kristoffer Jon ; Moth, Andreas Leon Aagard ; Morup, Morten ; Schmidt, Mikkel N.
Author_Institution :
Sect. for Cognitive Syst., Tech. Univ. of Denmark, Lyngby, Denmark
Abstract :
The stochastic block-model and its non-parametric extension, the Infinite Relational Model (IRM), have become key tools for discovering group-structure in complex networks. Identifying these groups is a combinatorial inference problem which is usually solved by Gibbs sampling. However, whether Gibbs sampling suffices and can be scaled to the modeling of large scale real world complex networks has not been examined sufficiently. In this paper we evaluate the performance and mixing ability of Gibbs sampling in the Infinite Relational Model (IRM) by implementing a high performance Gibbs sampler. We find that Gibbs sampling can be computationally scaled to handle millions of nodes and billions of links. Investigating the behavior of the Gibbs sampler for different sizes of networks we find that the mixing ability decreases drastically with the network size, clearly indicating a need for better sampling strategies.
Keywords :
combinatorial mathematics; complex networks; nonparametric statistics; pattern clustering; sampling methods; stochastic processes; Gibbs sampling; clustering; combinatorial inference problem; complex network group-structure discovery; high performance Gibbs sampler; infinite relational model; large scale inference; large scale real world complex networks; nonparametric extension; stochastic block-model; Bayes methods; Complex networks; Computational modeling; Mathematical model; Mutual information; Stochastic processes; Bayesian inference; Gibbs sampling; Infinite Relational Model; Markov Chain Monte Carlo; large scale network modelling;
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2013 IEEE International Workshop on
Conference_Location :
Southampton
DOI :
10.1109/MLSP.2013.6661904