DocumentCode
53707
Title
Network Mapping by Replaying Hyperbolic Growth
Author
Papadopoulos, Fragkiskos ; Psomas, Constantinos ; Krioukov, Dmitri
Author_Institution
Cyprus Univ. of Technol., Limassol, Cyprus
Volume
23
Issue
1
fYear
2015
fDate
Feb. 2015
Firstpage
198
Lastpage
211
Abstract
Recent years have shown a promising progress in understanding geometric underpinnings behind the structure, function, and dynamics of many complex networks in nature and society. However, these promises cannot be readily fulfilled and lead to important practical applications, without a simple, reliable, and fast network mapping method to infer the latent geometric coordinates of nodes in a real network. Here, we present HyperMap, a simple method to map a given real network to its hyperbolic space. The method utilizes a recent geometric theory of complex networks modeled as random geometric graphs in hyperbolic spaces. The method replays the network´s geometric growth, estimating at each time-step the hyperbolic coordinates of new nodes in a growing network by maximizing the likelihood of the network snapshot in the model. We apply HyperMap to the Autonomous Systems (AS) Internet and find that: 1) the method produces meaningful results, identifying soft communities of ASs belonging to the same geographic region; 2) the method has a remarkable predictive power: Using the resulting map, we can predict missing links in the Internet with high precision, outperforming popular existing methods; and 3) the resulting map is highly navigable, meaning that a vast majority of greedy geometric routing paths are successful and low-stretch. Even though the method is not without limitations, and is open for improvement, it occupies a unique attractive position in the space of tradeoffs between simplicity, accuracy, and computational complexity.
Keywords
complex networks; geometry; graph theory; network theory (graphs); AS Internet; HyperMap; autonomous system; complex network; geometric coordinate; greedy geometric routing path; hyperbolic growth; network mapping; random geometric graph; Communities; Complex networks; Computational modeling; Geometry; Internet; Topology; Applications; inference; network geometry;
fLanguage
English
Journal_Title
Networking, IEEE/ACM Transactions on
Publisher
ieee
ISSN
1063-6692
Type
jour
DOI
10.1109/TNET.2013.2294052
Filename
6705650
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