Ensemble-Based Algorithms to Detect Disjoint and Overlapping Communities in Networks
Abstract
Given a set AL of community detection algorithms and a graph G as inputs, we propose two ensemble methods EnDisCO and MeDOC that (respectively) identify disjoint and overlapping communities in G. EnDisCO transforms a graph into a latent feature space by leveraging multiple base solutions and discovers disjoint community structure. MeDOC groups similar base communities into a meta-community and detects both disjoint and overlapping community structures. Experiments are conducted at different scales on both synthetically generated networks as well as on several real-world networks for which the underlying ground-truth community structure is available. Our extensive experiments show that both algorithms outperform state-of-the-art non-ensemble algorithms by a significant margin. Moreover, we compare EnDisCO and MeDOC with a recent ensemble method for disjoint community detection and show that our approaches achieve superior performance. To the best of our knowledge, MeDOC is the first ensemble approach for overlapping community detection.
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