Introduces ASI metric and null-model test to quantify angular separation of communities in geometric spaces and applies it to show temperature-induced dimensionality jumps and intrinsic dimension detection in hyperbolic networks.
Latent Geometry Inspired Graph Dissimilarities Enhance Affinity Propagation Community Detection in Complex Networks
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Affinity propagation is one of the most effective unsupervised pattern recognition algorithms for data clustering in high-dimensional feature space. However, the numerous attempts to test its performance for community detection in complex networks have been attaining results very far from the state of the art methods such as Infomap and Louvain. Yet, all these studies agreed that the crucial problem is to convert the unweighted network topology in a 'smart-enough' node dissimilarity matrix that is able to properly address the message passing procedure behind affinity propagation clustering. Here we introduce a conceptual innovation and we discuss how to leverage network latent geometry notions in order to design dissimilarity matrices for affinity propagation community detection. Our results demonstrate that the latent geometry inspired dissimilarity measures we design bring affinity propagation to equal or outperform current state of the art methods for community detection. These findings are solidly proven considering both synthetic 'realistic' networks (with known ground-truth communities) and real networks (with community metadata), even when the data structure is corrupted by noise artificially induced by missing or spurious connectivity.
fields
cs.LG 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
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Angular separability of data clusters or network communities in geometrical space and its relevance to hyperbolic embedding
Introduces ASI metric and null-model test to quantify angular separation of communities in geometric spaces and applies it to show temperature-induced dimensionality jumps and intrinsic dimension detection in hyperbolic networks.