Deakin University
Browse

A fast algorithm for optimally finding partially disjoint shortest paths

conference contribution
posted on 2025-02-04, 01:08 authored by L Guo, Y Deng, K Liao, Q He, T Sellis, Z Hu
The classical disjoint shortest path problem has recently recalled interests from researchers in the network planning and optimization community. However, the requirement of the shortest paths being completely vertex or edge disjoint might be too restrictive and demands much more resources in a network. Partially disjoint shortest paths, in which a bounded number of shared vertices or edges is allowed, balance between degree of disjointness and occupied network resources. In this paper, we consider the problem of finding k shortest paths which are edge disjoint but partially vertex disjoint. For a pair of distinct vertices in a network graph, the problem aims to optimally find k edge disjoint shortest paths among which at most a bounded number of vertices are shared by at least two paths. In particular, we present novel techniques for exactly solving the problem with a runtime that significantly improves the current best result. The proposed algorithm is also validated by computer experiments on both synthetic and real networks which demonstrate its superior efficiency of up to three orders of magnitude faster than the state of the art.

History

Volume

2018-July

Pagination

1456-1462

Location

Stockholm, Sweden

Start date

2018-07-13

End date

2018-07-19

ISSN

1045-0823

ISBN-13

978-0-9992411-2-7

Language

Eng

Publication classification

E1.1 Full written paper - refereed

Title of proceedings

IJCAI-18 : Proceedings of the 27th International Joint Conference on Artificial Intelligence 2018

Event

Artificial Intelligence. Joint Conference (27th : 2018 : Stockholm, Sweden)

Publisher

International Joint Conferences on Artificial Intelligence Organization

Place of publication

California

Usage metrics

    Research Publications

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC