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Approximating Shortest Paths in Large-Scale Networks with an Application to Intelligent Transportation Systems
Author(s) -
Yu-Li Chou,
H. Edwin Romeijn,
Robert L. Smith
Publication year - 1998
Publication title -
informs journal on computing
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.403
H-Index - 80
eISSN - 1526-5528
pISSN - 1091-9856
DOI - 10.1287/ijoc.10.2.163
Subject(s) - subnetwork , computer science , computation , routing (electronic design automation) , set (abstract data type) , scale (ratio) , shortest path problem , mathematical optimization , algorithm , computer network , theoretical computer science , mathematics , graph , physics , quantum mechanics , programming language

We propose a hierarchical algorithm for approximating shortest paths between all pairs of nodes in a large-scale network. The algorithm begins by extracting a high-level subnetwork of relatively long links (and their associated nodes) where routing decisions are most crucial. This high-level network partitions the shorter links and their nodes into a set of lower-level subnetworks. By fixing gateways within the high-level network for entering and exiting these subnetworks, a computational savings is achieved at the expense of optimality. We explore the magnitude of these tradeoffs between computational savings and associated errors both analytically and empirically with a case study of the Southeast Michigan traffic network. An order-of-magnitude drop in computation times was achieved with an on-line route guidance simulation, at the expense of less than 6% increase in expected trip times.

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