We revisit classical connectivity problems in the {CONGEST} model of distributed computing. By using techniques from fault tolerant network design, we show improved constructions, some of which are even "local" (i.e., with O~(1) rounds) for problems that are closely related to hard global problems (i.e., with a lower bound of Omega(Diam+sqrt{n}) rounds). Distributed Minimum Cut: Nanongkai and Su presented a randomized algorithm for computing a (1+epsilon)-approximation of the minimum cut using O~(D +sqrt{n}) rounds where D is the diameter of the graph. For a sufficiently large minimum cut lambda=Omega(sqrt{n}), this is tight due to Das Sarma et al. [FOCS \u2711], Ghaffari and Kuhn [DISC \u2713]. - Small Cuts: A special setting that remains...
We address a collection of related connectivity and cut problems in simple graphs that reach from th...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
This paper presents improved deterministic distributed algorithms, with O(log n)-bit messages, for s...
We present near-optimal algorithms for detecting small vertex cuts in the {CONGEST} model of distrib...
In this paper we consider two classic cut-problems, Global Min-Cut and Min k-Cut, via the lens of fa...
Distributed graph algorithms in the standard CONGEST model often exhibit the time-complexity lower b...
We study the problem of computing a sparse cut in an undirected network graph G=(V,E). We measure th...
Motivated by the increasing need for fast processing of large-scale graphs, we study a number of fun...
A long line of research about connectivity in the Massively Parallel Computation model has culminate...
We show that the minimumcut problem for weighted undirected graphs can be solved in NC using three s...
We describe random sampling techniques for approximately solving problems that involve cuts and flow...
We prove that any n-node graph G with diameter D admits shortcuts with congestion O(δD log n) and di...
Despite the large amount of work on solving graph problems in the data stream model, there do not ex...
Finding sparse cuts is an important tool in analyzing large-scale distributed networks such as the I...
In this paper, we refine the (almost) existentially optimal distributed Laplacian solver recently de...
We address a collection of related connectivity and cut problems in simple graphs that reach from th...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
This paper presents improved deterministic distributed algorithms, with O(log n)-bit messages, for s...
We present near-optimal algorithms for detecting small vertex cuts in the {CONGEST} model of distrib...
In this paper we consider two classic cut-problems, Global Min-Cut and Min k-Cut, via the lens of fa...
Distributed graph algorithms in the standard CONGEST model often exhibit the time-complexity lower b...
We study the problem of computing a sparse cut in an undirected network graph G=(V,E). We measure th...
Motivated by the increasing need for fast processing of large-scale graphs, we study a number of fun...
A long line of research about connectivity in the Massively Parallel Computation model has culminate...
We show that the minimumcut problem for weighted undirected graphs can be solved in NC using three s...
We describe random sampling techniques for approximately solving problems that involve cuts and flow...
We prove that any n-node graph G with diameter D admits shortcuts with congestion O(δD log n) and di...
Despite the large amount of work on solving graph problems in the data stream model, there do not ex...
Finding sparse cuts is an important tool in analyzing large-scale distributed networks such as the I...
In this paper, we refine the (almost) existentially optimal distributed Laplacian solver recently de...
We address a collection of related connectivity and cut problems in simple graphs that reach from th...
We use random sampling as a tool for solving undirected graph problems. We show that the sparse grap...
This paper presents improved deterministic distributed algorithms, with O(log n)-bit messages, for s...