Maps of random walks on complex networks reveal community structure
University of Washington · Santa Fe Institute
Abstract
To comprehend the multipartite organization of large-scale biological and social systems, we introduce an information theoretic approach that reveals community structure in weighted and directed networks. We use the probability flow of random walks on a network as a proxy for information flows in the real system and decompose the network into modules by compressing a description of the probability flow. The result is a map that both simplifies and highlights the regularities in the structure and their relationships. We illustrate the method by making a map of scientific communication as captured in the citation patterns of >6,000 journals. We discover a multicentric organization with fields that vary…
Citation impact
- FWCI
- 66.13
- Percentile
- 100%
- References
- 36
Authors
2Topics & keywords
- Information flow
- Computer science
- Random walk
- Complex network
- Theoretical computer science
- Citation
- Multipartite
- Network science
- Quality Education