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Spectral density-based clustering algorithms for complex networks.

Taiane Coelho Ramos1,2, Janaina Mourão-Miranda2,3, André Fujita1

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Summary
This summary is machine-generated.

This study introduces novel graph clustering methods, k-means and gCEM, to group networks by connectivity structure. These methods effectively identify subgroups in functional brain networks and chemical compounds, even with natural data fluctuations.

Keywords:
clusteringcomplex networkselectrocorticographygraph theorygraphs and networksspectral methods

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Area of Science:

  • Graph theory
  • Network science
  • Data mining

Background:

  • Traditional graph clustering focuses on vertex grouping.
  • Grouping networks by connectivity is crucial for applications like identifying brain network patterns in disorders.
  • Real-world networks exhibit natural fluctuations that complicate clustering.

Purpose of the Study:

  • To develop and evaluate novel graph clustering methods for grouping networks based on connectivity structure.
  • To address the challenge of natural fluctuations in real-world network data.
  • To apply these methods to functional brain networks and chemical compound datasets.

Main Methods:

  • Introduced k-means for clustering graphs of the same size.
  • Developed gCEM, a model-based approach for clustering graphs of different sizes.
  • Utilized spectral density as a key feature for distinguishing graph connectivity structures.

Main Results:

  • Both k-means and gCEM demonstrated effective performance on toy models and real-world data.
  • The methods successfully clustered graphs with differing connectivity structures, even with similar numbers of edges, vertices, and centrality.
  • Performance was validated on functional brain networks of monkeys and chemical compound datasets.

Conclusions:

  • K-means is recommended for graph clustering when graphs have an equal number of vertices.
  • The gCEM method is recommended for graph clustering when graphs have varying numbers of vertices.
  • These spectral density-based clustering approaches offer a robust way to analyze network connectivity.