Abstract
In the decremental Single-Source Shortest Path problem (SSSP), we are given a weighted directed graph G= (V, E, w) undergoing edge deletions and a source vertex r in V; let n= vert V vert, m= vert E vert and W be the aspect ratio of the graph. The goal is to obtain a data structure that maintains shortest paths from r to all vertices in V and can answer distance queries in O(1) time, as well as return the corresponding path P in O(vert P vert) time. This problem was first considered by Even and Shiloach [JACM'81], who provided an algorithm with total update time O(mn) for unweighted undirected graphs; this was later extended to directed weighted graphs [FOCS'95, STOC'99]. There are conditional lower bounds showing that O(mn) is in fact near-optimal [ESA'04, FOCS'14, STOC'15, STOC'20]. In a breakthrough result, Forster et al. showed that total update time min {m{7/6}n{2/3+o(1)}, m{3/4}n{5/4+o(1)} } text{polylog}(W)= mn{0.9+o(1)} text{polylog} (W), is possible if the algorithm is allowed to return (1 + epsilon)-approximate paths, instead of exact ones [STOC'14, ICALP'15]. No further progress was made until Probst Gutenberg and Wulff-Nilsen [SODA'20] provided a new approach for the problem, which yields total time tilde{O}(min {m{2/3}n{4/3} log W, (mn){7/8} log W })= tilde{O}(min {n{8/3} log W, mn{3/4} log W }). Our result builds on this recent approach, but overcomes its limitations by introducing a significantly more powerful abstraction, as well as a different core subroutine. Our new framework yields a decremental (1+ epsilon)-approximate SSSP data structure with total update time tilde{O}(n{2} log{4}W epsilon). Our algorithm is thus near-optimal for dense graphs with polynomial edge-weights. Our framework can also be applied to sparse graphs to obtain total update time tilde{O}(mn{2/3} log{3}W epsilon). Combined, these data structures dominate all previous results. Like all previous o(mn) algorithms that can return a path (not just a distance estimate), our result is randomized and assumes an oblivious adversary. Our framework effectively allows us to reduce SSSP in general graphs to the same problem in directed acyclic graphs (DAGs). We believe that our framework has significant potential to influence future work on directed SSSP, both in the dynamic model and in others.
Original language | English |
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Title of host publication | Proceedings - 2020 IEEE 61st Annual Symposium on Foundations of Computer Science, FOCS 2020 |
Publisher | IEEE |
Publication date | 2020 |
Pages | 1112-1122 |
Article number | 9317923 |
ISBN (Electronic) | 9781728196213 |
DOIs | |
Publication status | Published - 2020 |
Event | 61st IEEE Annual Symposium on Foundations of Computer Science, FOCS 2020 - Virtual, Durham, United States Duration: 16 Nov 2020 → 19 Nov 2020 |
Conference
Conference | 61st IEEE Annual Symposium on Foundations of Computer Science, FOCS 2020 |
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Country/Territory | United States |
City | Virtual, Durham |
Period | 16/11/2020 → 19/11/2020 |
Sponsor | IEEE Computer Society Technical Committee on Mathematical Foundations of Computing |
Keywords
- dynamic algorithm
- generalized topological order
- shortest paths
- single-source shortest paths