79
23

Distributed Dense Subgraph Detection and Low Outdegree Orientation

Abstract

The densest subgraph problem, introduced in the 80s by Picard and Queyranne as well as Goldberg, is a classic problem in combinatorial optimization with a wide range of applications. The lowest outdegree orientation problem is known to be its dual problem. We study both the problem of finding dense subgraphs and the problem of computing a low outdegree orientation in the distributed settings. Suppose G=(V,E)G=(V,E) is the underlying network as well as the input graph. Let DD denote the density of the maximum density subgraph of GG. Our main results are as follows. Given a value D~D\tilde{D} \leq D and 0<ϵ<10 < \epsilon < 1, we show that a subgraph with density at least (1ϵ)D~(1-\epsilon)\tilde{D} can be identified deterministically in O((logn)/ϵ)O((\log n) / \epsilon) rounds in the LOCAL model. We also present a lower bound showing that our result for the LOCAL model is tight up to an O(logn)O(\log n) factor. In the CONGEST model, we show that such a subgraph can be identified in O((log3n)/ϵ3)O((\log^3 n) / \epsilon^3) rounds with high probability. Our techniques also lead to an O(diameter+(log4n)/ϵ4)O(diameter + (\log^4 n)/\epsilon^4)-round algorithm that yields a 1ϵ1-\epsilon approximation to the densest subgraph. This improves upon the previous O(diameter/ϵlogn)O(diameter /\epsilon \cdot \log n)-round algorithm by Das Sarma et al. [DISC 2012] that only yields a 1/2ϵ1/2-\epsilon approximation. Given an integer D~D\tilde{D} \geq D and Ω(1/D~)<ϵ<1/4\Omega(1/\tilde{D}) < \epsilon < 1/4, we give a deterministic, O~((log2n)/ϵ2)\tilde{O}((\log^2 n) /\epsilon^2)-round algorithm in the CONGEST model that computes an orientation where the outdegree of every vertex is upper bounded by (1+ϵ)D~(1+\epsilon)\tilde{D}. Previously, the best deterministic algorithm and randomized algorithm by Harris [FOCS 2019] run in O~((log6n)/ϵ4)\tilde{O}((\log^6 n)/ \epsilon^4) rounds and O~((log3n)/ϵ3)\tilde{O}((\log^3 n) /\epsilon^3) rounds respectively and only work in the LOCAL model.

View on arXiv
Comments on this paper