Title
The Dyadic Curvelet Transform For Multiscale Topological Complex Networks
Abstract
the Dyadic Curvelet transform (DClet), a newly proposed extended Curvelet transform to generate the multiscale non-redundant transformation, is proposed for understanding the topology of complex networks. Because of the essence of the Met that decomposes an input into coefficients and investigates them individually in different levels, it is proposed for deriving topology of complex networks. The proposed construction behaves the same matter as human eyes, processing an object by filtering the input data into a number of bands and levels. It is tested on Telecommunication network of Iran as a real extremely complex network with 92 intercity switching nodes, 3600 transmission nodes with 706350 E1 traffic channels and 315525 transmission channels. It is shown the properties of small world and scale free phenomena in telecommunication network and it is represented how the properties of the intercity network can be derived from the DClet decomposition. The simulation results exhibit that the new approach can be considered as a simulation tool for successfully design of the network topology and establishing the necessary trunk group sizes.
Year
DOI
Venue
2006
10.1109/APCCAS.2006.342214
2006 IEEE ASIA PACIFIC CONFERENCE ON CIRCUITS AND SYSTEMS
Keywords
Field
DocType
curvelet, multiscale, complex network, human visual system, intercity network
Topology,Telecommunications network,Curvelet transform,Human visual system model,Computer science,Communication channel,Filter (signal processing),Network topology,Complex network,Curvelet
Conference
Citations 
PageRank 
References 
0
0.34
6
Authors
3
Name
Order
Citations
PageRank
Marjan Sedighi Anaraki100.68
Kaoru Hirota21634195.49
Hajime Nobuhara319234.02