Affiliation:
1. University of Vienna, Austria
2. University of Salzburg, Austria
3. KTH Royal Institute of Technology, Sweden
Abstract
In the decremental single-source shortest paths (SSSP) problem, we want to maintain the distances between a given source node
s
and every other node in an
n
-node
m
-edge graph
G
undergoing edge deletions. While its static counterpart can be solved in near-linear time, this decremental problem is much more challenging even in the
undirected unweighted
case. In this case, the classic
O
(
mn
) total update time of Even and Shiloach [16] has been the fastest known algorithm for three decades. At the cost of a (1+ϵ)-approximation factor, the running time was recently improved to
n
2+
o
(1)
by Bernstein and Roditty [9]. In this article, we bring the running time down to near-linear: We give a (1+ϵ)-approximation algorithm with
m
1+
o
(1)
expected total update time, thus obtaining
near-linear time
. Moreover, we obtain
m
1+
o
(1)
log
W
time for the weighted case, where the edge weights are integers from 1 to
W
. The only prior work on weighted graphs in
o
(
mn
) time is the
mn
0.9 +
o
(1)
-time algorithm by Henzinger et al. [18, 19], which works for directed graphs with quasi-polynomial edge weights. The expected running time bound of our algorithm holds against an oblivious adversary.
In contrast to the previous results, which rely on maintaining a sparse emulator, our algorithm relies on maintaining a so-called
sparse
(
h
,
ϵ
)-
hop set
introduced by Cohen [12] in the PRAM literature. An (
h
, ϵ)-hop set of a graph
G
=(
V
,
E
) is a set
F
of weighted edges such that the distance between any pair of nodes in
G
can be (1+ϵ)-approximated by their
h
-hop distance (given by a path containing at most
h
edges) on
G
′
=(
V
,
E
∪
F
). Our algorithm can maintain an (
n
o
(1)
, ϵ)-hop set of near-linear size in near-linear time under edge deletions. It is the first of its kind to the best of our knowledge. To maintain approximate distances using this hop set, we extend the monotone Even-Shiloach tree of Henzinger et al. [20] and combine it with the bounded-hop SSSP technique of Bernstein [4, 5] and Mądry [27]. These two new tools might be of independent interest.
Funder
European Research Council
Ministry of Education - Singapore
Nanyang Technological University
Austrian Science Fund
Universität Wien
Publisher
Association for Computing Machinery (ACM)
Subject
Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software
Cited by
15 articles.
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