Intensity and coherence of motifs in weighted complex networks
Budapest University of Technology and Economics
Abstract
The local structure of unweighted networks can be characterized by the number of times a subgraph appears in the network. The clustering coefficient, reflecting the local configuration of triangles, can be seen as a special case of this approach. In this paper we generalize this method for weighted networks. We introduce subgraph "intensity" as the geometric mean of its link weights "coherence" as the ratio of the geometric to the corresponding arithmetic mean. Using these measures, motif scores and clustering coefficient can be generalized to weighted networks. To demonstrate these concepts, we apply them to financial and metabolic networks and find that inclusion of weights may considerably modify the…
Citation impact
- FWCI
- 18.82
- Percentile
- 100%
- References
- 29
Authors
4Topics & keywords
- Clustering coefficient
- Cluster analysis
- Coherence (philosophical gambling strategy)
- Mathematics
- Weighted arithmetic mean
- Pattern recognition (psychology)
- Network motif
- Computer science
- Reduced inequalities