436 research outputs found

    Simple parallel and distributed algorithms for spectral graph sparsification

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    We describe a simple algorithm for spectral graph sparsification, based on iterative computations of weighted spanners and uniform sampling. Leveraging the algorithms of Baswana and Sen for computing spanners, we obtain the first distributed spectral sparsification algorithm. We also obtain a parallel algorithm with improved work and time guarantees. Combining this algorithm with the parallel framework of Peng and Spielman for solving symmetric diagonally dominant linear systems, we get a parallel solver which is much closer to being practical and significantly more efficient in terms of the total work.Comment: replaces "A simple parallel and distributed algorithm for spectral sparsification". Minor change

    Probabilistic Spectral Sparsification In Sublinear Time

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    In this paper, we introduce a variant of spectral sparsification, called probabilistic (ε,δ)(\varepsilon,\delta)-spectral sparsification. Roughly speaking, it preserves the cut value of any cut (S,Sc)(S,S^{c}) with an 1±ε1\pm\varepsilon multiplicative error and a δS\delta\left|S\right| additive error. We show how to produce a probabilistic (ε,δ)(\varepsilon,\delta)-spectral sparsifier with O(nlogn/ε2)O(n\log n/\varepsilon^{2}) edges in time O~(n/ε2δ)\tilde{O}(n/\varepsilon^{2}\delta) time for unweighted undirected graph. This gives fastest known sub-linear time algorithms for different cut problems on unweighted undirected graph such as - An O~(n/OPT+n3/2+t)\tilde{O}(n/OPT+n^{3/2+t}) time O(logn/t)O(\sqrt{\log n/t})-approximation algorithm for the sparsest cut problem and the balanced separator problem. - A n1+o(1)/ε4n^{1+o(1)}/\varepsilon^{4} time approximation minimum s-t cut algorithm with an εn\varepsilon n additive error

    Towards Resistance Sparsifiers

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    We study resistance sparsification of graphs, in which the goal is to find a sparse subgraph (with reweighted edges) that approximately preserves the effective resistances between every pair of nodes. We show that every dense regular expander admits a (1+ϵ)(1+\epsilon)-resistance sparsifier of size O~(n/ϵ)\tilde O(n/\epsilon), and conjecture this bound holds for all graphs on nn nodes. In comparison, spectral sparsification is a strictly stronger notion and requires Ω(n/ϵ2)\Omega(n/\epsilon^2) edges even on the complete graph. Our approach leads to the following structural question on graphs: Does every dense regular expander contain a sparse regular expander as a subgraph? Our main technical contribution, which may of independent interest, is a positive answer to this question in a certain setting of parameters. Combining this with a recent result of von Luxburg, Radl, and Hein~(JMLR, 2014) leads to the aforementioned resistance sparsifiers

    Similarity-Aware Spectral Sparsification by Edge Filtering

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    In recent years, spectral graph sparsification techniques that can compute ultra-sparse graph proxies have been extensively studied for accelerating various numerical and graph-related applications. Prior nearly-linear-time spectral sparsification methods first extract low-stretch spanning tree from the original graph to form the backbone of the sparsifier, and then recover small portions of spectrally-critical off-tree edges to the spanning tree to significantly improve the approximation quality. However, it is not clear how many off-tree edges should be recovered for achieving a desired spectral similarity level within the sparsifier. Motivated by recent graph signal processing techniques, this paper proposes a similarity-aware spectral graph sparsification framework that leverages efficient spectral off-tree edge embedding and filtering schemes to construct spectral sparsifiers with guaranteed spectral similarity (relative condition number) level. An iterative graph densification scheme is introduced to facilitate efficient and effective filtering of off-tree edges for highly ill-conditioned problems. The proposed method has been validated using various kinds of graphs obtained from public domain sparse matrix collections relevant to VLSI CAD, finite element analysis, as well as social and data networks frequently studied in many machine learning and data mining applications
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