MLJun 8, 2015

Community detection in multi-relational data with restricted multi-layer stochastic blockmodel

arXiv:1506.02699v2102 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of analyzing complex multi-relational networks for researchers in statistics and network science, but it is incremental as it builds on existing stochastic blockmodel frameworks with restricted parameter spaces.

The paper tackled community detection in multi-relational data by comparing multi-layer stochastic blockmodels (MLSBM and RMLSBM) with baseline methods, showing that RMLSBM outperforms MLSBM under specific conditions like high community growth rates or low average degrees, and multi-layer approaches generally achieve superior performance in simulations and real data.

In recent years there has been an increased interest in statistical analysis of data with multiple types of relations among a set of entities. Such multi-relational data can be represented as multi-layer graphs where the set of vertices represents the entities and multiple types of edges represent the different relations among them. For community detection in multi-layer graphs, we consider two random graph models, the multi-layer stochastic blockmodel (MLSBM) and a model with a restricted parameter space, the restricted multi-layer stochastic blockmodel (RMLSBM). We derive consistency results for community assignments of the maximum likelihood estimators (MLEs) in both models where MLSBM is assumed to be the true model, and either the number of nodes or the number of types of edges or both grow. We compare MLEs in the two models with other baseline approaches, such as separate modeling of layers, aggregating the layers and majority voting. RMLSBM is shown to have advantage over MLSBM when either the growth rate of the number of communities is high or the growth rate of the average degree of the component graphs in the multi-graph is low. We also derive minimax rates of error and sharp thresholds for achieving consistency of community detection in both models, which are then used to compare the multi-layer models with a baseline model, the aggregate stochastic block model. The simulation studies and real data applications confirm the superior performance of the multi-layer approaches in comparison to the baseline procedures.

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