Shortest path counting in complex networks based on powers of the adjacency matrix.

Chaos

Department of Systems Science, Faculty of Arts and Sciences, Beijing Normal University, Zhuhai 519087, China.

Published: October 2024

AI Article Synopsis

  • Complex networks, which consist of interconnected nodes and edges, are vital in understanding various systems in nature and society, with a focus on shortest path calculations in network science.
  • The study extends the use of the adjacency matrix from counting walks to counting shortest paths, addressing the challenge of calculating both the number and length of these paths effectively.
  • The proposed algorithm, tested on both synthetic and real-world networks, is significantly faster and more efficient than traditional methods, with potential applications in areas like traffic optimization and social network analysis.

Article Abstract

Complex networks describe a broad range of systems in nature and society. As a fundamental concept of graph theory, the path connecting nodes and edges plays a crucial role in network science, where the computation of shortest path lengths and numbers has garnered substantial focus. It is well known that powers of the adjacency matrix can calculate the number of walks, specifying their corresponding lengths. However, developing methodologies to quantify both the number and length of shortest paths through the adjacency matrix remains a challenge. Here, we extend powers of the adjacency matrix from walks to shortest paths. We address the all-pairs shortest path count problem and propose a fast algorithm based on powers of the adjacency matrix that counts both the number and the length of all shortest paths. Numerous experiments on synthetic and real-world networks demonstrate that our algorithm is significantly faster than the classical algorithms across various network types and sizes. Moreover, we verified that the time complexity of our proposed algorithm significantly surpasses that of the current state-of-the-art algorithms. The superior property of the algorithm allows for rapid calculation of all shortest paths within large-scale networks, offering significant potential applications in traffic flow optimization and social network analysis.

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Source
http://dx.doi.org/10.1063/5.0226144DOI Listing

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