Finding shortest and nearly shortest path nodes in large substantially incomplete networks by hyperbolic mapping

Journal Article (2023)
Author(s)

Maksim Kitsak (TU Delft - Network Architectures and Services, Northeastern University)

Alexander Ganin (U.S. Army Engineer Research and Development Center, University of Virginia)

Ahmed Elmokashfi (Simula Metropolitan Center for Digital Engineering)

Hongzhu Cui (Columbia University, Worcester Polytechnic Institute)

Daniel A. Eisenberg (Naval Post Graduate School of Engineering and Applied Sciences)

David L. Alderson (Naval Post Graduate School of Engineering and Applied Sciences)

Dmitry Korkin (Worcester Polytechnic Institute)

Igor Linkov (U.S. Army Engineer Research and Development Center)

Research Group
Network Architectures and Services
DOI related publication
https://doi.org/10.1038/s41467-022-35181-w
More Info
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Publication Year
2023
Language
English
Research Group
Network Architectures and Services
Issue number
1
Volume number
14
Article number
186
Downloads counter
384
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Abstract

Dynamic processes on networks, be it information transfer in the Internet, contagious spreading in a social network, or neural signaling, take place along shortest or nearly shortest paths. Computing shortest paths is a straightforward task when the network of interest is fully known, and there are a plethora of computational algorithms for this purpose. Unfortunately, our maps of most large networks are substantially incomplete due to either the highly dynamic nature of networks, or high cost of network measurements, or both, rendering traditional path finding methods inefficient. We find that shortest paths in large real networks, such as the network of protein-protein interactions and the Internet at the autonomous system level, are not random but are organized according to latent-geometric rules. If nodes of these networks are mapped to points in latent hyperbolic spaces, shortest paths in them align along geodesic curves connecting endpoint nodes. We find that this alignment is sufficiently strong to allow for the identification of shortest path nodes even in the case of substantially incomplete networks, where numbers of missing links exceed those of observable links. We demonstrate the utility of latent-geometric path finding in problems of cellular pathway reconstruction and communication security.