35 research outputs found

    Matching Is as Easy as the Decision Problem, in the NC Model

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    Is matching in NC, i.e., is there a deterministic fast parallel algorithm for it? This has been an outstanding open question in TCS for over three decades, ever since the discovery of randomized NC matching algorithms [KUW85, MVV87]. Over the last five years, the theoretical computer science community has launched a relentless attack on this question, leading to the discovery of several powerful ideas. We give what appears to be the culmination of this line of work: An NC algorithm for finding a minimum-weight perfect matching in a general graph with polynomially bounded edge weights, provided it is given an oracle for the decision problem. Consequently, for settling the main open problem, it suffices to obtain an NC algorithm for the decision problem. We believe this new fact has qualitatively changed the nature of this open problem. All known efficient matching algorithms for general graphs follow one of two approaches: given by Edmonds [Edm65] and Lov\'asz [Lov79]. Our oracle-based algorithm follows a new approach and uses many of the ideas discovered in the last five years. The difficulty of obtaining an NC perfect matching algorithm led researchers to study matching vis-a-vis clever relaxations of the class NC. In this vein, recently Goldwasser and Grossman [GG15] gave a pseudo-deterministic RNC algorithm for finding a perfect matching in a bipartite graph, i.e., an RNC algorithm with the additional requirement that on the same graph, it should return the same (i.e., unique) perfect matching for almost all choices of random bits. A corollary of our reduction is an analogous algorithm for general graphs.Comment: Appeared in ITCS 202

    Approximating the Largest Root and Applications to Interlacing Families

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    We study the problem of approximating the largest root of a real-rooted polynomial of degree nn using its top kk coefficients and give nearly matching upper and lower bounds. We present algorithms with running time polynomial in kk that use the top kk coefficients to approximate the maximum root within a factor of n1/kn^{1/k} and 1+O(lognk)21+O(\tfrac{\log n}{k})^2 when klognk\leq \log n and k>lognk>\log n respectively. We also prove corresponding information-theoretic lower bounds of nΩ(1/k)n^{\Omega(1/k)} and 1+Ω(log2nkk)21+\Omega\left(\frac{\log \frac{2n}{k}}{k}\right)^2, and show strong lower bounds for noisy version of the problem in which one is given access to approximate coefficients. This problem has applications in the context of the method of interlacing families of polynomials, which was used for proving the existence of Ramanujan graphs of all degrees, the solution of the Kadison-Singer problem, and bounding the integrality gap of the asymmetric traveling salesman problem. All of these involve computing the maximum root of certain real-rooted polynomials for which the top few coefficients are accessible in subexponential time. Our results yield an algorithm with the running time of 2O~(n3)2^{\tilde O(\sqrt[3]n)} for all of them

    EFX Exists for Three Agents

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    We study the problem of distributing a set of indivisible items among agents with additive valuations in a fair\mathit{fair} manner. The fairness notion under consideration is Envy-freeness up to any item (EFX). Despite significant efforts by many researchers for several years, the existence of EFX allocations has not been settled beyond the simple case of two agents. In this paper, we show constructively that an EFX allocation always exists for three agents. Furthermore, we falsify the conjecture by Caragiannis et al. by showing an instance with three agents for which there is a partial EFX allocation (some items are not allocated) with higher Nash welfare than that of any complete EFX allocation.Comment: Full version of a paper published at Economics and Computation (EC) 202

    Simply Exponential Approximation of the Permanent of Positive Semidefinite Matrices

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    We design a deterministic polynomial time cnc^n approximation algorithm for the permanent of positive semidefinite matrices where c=eγ+14.84c=e^{\gamma+1}\simeq 4.84. We write a natural convex relaxation and show that its optimum solution gives a cnc^n approximation of the permanent. We further show that this factor is asymptotically tight by constructing a family of positive semidefinite matrices
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