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Single Pass Spectral Sparsification in Dynamic Streams

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arxiv 1407.1289 v3 pith:3NEEOE7M submitted 2014-07-04 cs.DS

Single Pass Spectral Sparsification in Dynamic Streams

classification cs.DS
keywords spectralsparsifiersalgorithmdynamicepsilonmatrixpasssingle
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present the first single pass algorithm for computing spectral sparsifiers of graphs in the dynamic semi-streaming model. Given a single pass over a stream containing insertions and deletions of edges to a graph G, our algorithm maintains a randomized linear sketch of the incidence matrix of G into dimension O((1/epsilon^2) n polylog(n)). Using this sketch, at any point, the algorithm can output a (1 +/- epsilon) spectral sparsifier for G with high probability. While O((1/epsilon^2) n polylog(n)) space algorithms are known for computing "cut sparsifiers" in dynamic streams [AGM12b, GKP12] and spectral sparsifiers in "insertion-only" streams [KL11], prior to our work, the best known single pass algorithm for maintaining spectral sparsifiers in dynamic streams required sketches of dimension Omega((1/epsilon^2) n^(5/3)) [AGM14]. To achieve our result, we show that, using a coarse sparsifier of G and a linear sketch of G's incidence matrix, it is possible to sample edges by effective resistance, obtaining a spectral sparsifier of arbitrary precision. Sampling from the sketch requires a novel application of ell_2/ell_2 sparse recovery, a natural extension of the ell_0 methods used for cut sparsifiers in [AGM12b]. Recent work of [MP12] on row sampling for matrix approximation gives a recursive approach for obtaining the required coarse sparsifiers. Under certain restrictions, our approach also extends to the problem of maintaining a spectral approximation for a general matrix A^T A given a stream of updates to rows in A.

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    Sparse-HFS computes semi-supervised learning solutions on large graphs with O(n polylog(n)) space and O(m polylog(n)) time via online spectral graph sparsification.