Publication | Closed Access
THE SCALE-FREE AND SMALL-WORLD PROPERTIES OF COMPLEX NETWORKS ON SIERPINSKI-TYPE HEXAGON
15
Citations
14
References
2020
Year
Pattern FormationNetwork EvolutionNetwork ScienceGraph TheoryPhysicsRandom GraphNetwork ComplexitySierpinski-type HexagonNetwork AnalysisEducationScale-free NetworkAverage Path LengthDiscrete MathematicsNetwork TheoryFractal AnalysisAverage Clustering CoefficientsNetwork Dynamic
In this paper, a network is generated from a Sierpinski-type hexagon by applying the encoding method in fractal. The criterion of neighbor is established to quantify the relationships among the nodes in the network. Based on the self-similar structures, we verify the scale-free and small-world effects. The power-law exponent on degree distribution is derived to be [Formula: see text] and the average clustering coefficients are shown to be larger than [Formula: see text]. Moreover, we give the bounds of the average path length of our proposed network from the renewal theorem and self-similarity.
| Year | Citations | |
|---|---|---|
Page 1
Page 1