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Murtagh, Jack

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Murtagh

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Murtagh, Jack

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Now showing 1 - 2 of 2
  • Publication

    The Complexity of Computing the Optimal Composition of Differential Privacy

    (Springer Science + Business Media, 2015) Murtagh, Jack; Vadhan, Salil

    In the study of differential privacy, composition theorems (starting with the original paper of Dwork, McSherry, Nissim, and Smith (TCC’06)) bound the degradation of privacy when composing several differentially private algorithms. Kairouz, Oh, and Viswanath (ICML’15) showed how to compute the optimal bound for composing k arbitrary ( , δ)- differentially private algorithms. We characterize the optimal composition for the more general case of k arbitrary ( 1, δ1), . . . ,( k, δk)-differentially private algorithms where the privacy parameters may differ for each algorithm in the composition. We show that computing the optimal composition in general is #P-complete. Since computing optimal composition exactly is infeasible (unless FP=#P), we give an approximation algorithm that computes the composition to arbitrary accuracy in polynomial time. The algorithm is a modification of Dyer’s dynamic programming approach to approximately counting solutions to knapsack problems (STOC’03).

  • Publication

    Derandomization Beyond Connectivity: Undirected Laplacian Systems in Nearly Logarithmic Space

    (2017) Murtagh, Jack; Reingold, Omer; Sidford, Aaron; Vadhan, Salil

    We give a deterministic O˜(log n)-space algorithm for approximately solving linear systems given by Laplacians of undirected graphs, and consequently also approximating hitting times, commute times, and escape probabilities for undirected graphs. Previously, such systems were known to be solvable by randomized algorithms using O(log n) space (Doron, Le Gall, and Ta-Shma, 2017) and hence by deterministic algorithms using O(log3/2 n) space (Saks and Zhou, FOCS 1995 and JCSS 1999). Our algorithm combines ideas from time-efficient Laplacian solvers (Spielman and Teng, STOC ‘04; Peng and Spielman, STOC ‘14) with ideas used to show that UNDIRECTED S-T CONNECTIVITY is in deterministic logspace (Reingold, STOC ‘05 and JACM ‘08; Rozenman and Vadhan, RANDOM ‘05).