On Weighted Graph Sparsification by Linear Sketching
September 16, 2022 Β· Declared Dead Β· π IEEE Annual Symposium on Foundations of Computer Science
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Authors
Yu Chen, Sanjeev Khanna, Huan Li
arXiv ID
2209.07729
Category
cs.DS: Data Structures & Algorithms
Citations
12
Venue
IEEE Annual Symposium on Foundations of Computer Science
Last Checked
3 months ago
Abstract
A seminal work of [Ahn-Guha-McGregor, PODS'12] showed that one can compute a cut sparsifier of an unweighted undirected graph by taking a near-linear number of linear measurements on the graph. Subsequent works also studied computing other graph sparsifiers using linear sketching, and obtained near-linear upper bounds for spectral sparsifiers [Kapralov-Lee-Musco-Musco-Sidford, FOCS'14] and first non-trivial upper bounds for spanners [Filtser-Kapralov-Nouri, SODA'21]. All these linear sketching algorithms, however, only work on unweighted graphs. In this paper, we initiate the study of weighted graph sparsification by linear sketching by investigating a natural class of linear sketches that we call incidence sketches, in which each measurement is a linear combination of the weights of edges incident on a single vertex. Our results are: 1. Weighted cut sparsification: We give an algorithm that computes a $(1 + Ξ΅)$-cut sparsifier using $\tilde{O}(n Ξ΅^{-3})$ linear measurements, which is nearly optimal. 2. Weighted spectral sparsification: We give an algorithm that computes a $(1 + Ξ΅)$-spectral sparsifier using $\tilde{O}(n^{6/5} Ξ΅^{-4})$ linear measurements. Complementing our algorithm, we then prove a superlinear lower bound of $Ξ©(n^{21/20-o(1)})$ measurements for computing some $O(1)$-spectral sparsifier using incidence sketches. 3. Weighted spanner computation: We focus on graphs whose largest/smallest edge weights differ by an $O(1)$ factor, and prove that, for incidence sketches, the upper bounds obtained by~[Filtser-Kapralov-Nouri, SODA'21] are optimal up to an $n^{o(1)}$ factor.
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