Affiliation:
1. Mathematics and Computer Science , PO Box 5031 , 2600 GA Delft, The Netherlands
Abstract
Abstract
By a thorough performance comparison, we compare the recently proposed, operator-based linear clustering process on a network with classical, existing clustering algorithms. The linear clustering process produces clusters or partitions based on the eigenstructure of a linear operator on a graph that replaces nodes to ‘more natural’ positions by attractive and repulsive forces. Synthetic benchmarks, along with real-world networks possessing or lacking a known community structure, are considered. Our comparative analysis demonstrates that our linear clustering process generates superior partitions compared to the algorithms assessed in most instances, while of comparable computational complexity with the simplest existing clustering algorithms.
Funder
NExTWORKx
European Research Council
European Union’s Horizon 2020
Publisher
Oxford University Press (OUP)
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