149,170 research outputs found

    On the expected diameter, width, and complexity of a stochastic convex-hull

    Full text link
    We investigate several computational problems related to the stochastic convex hull (SCH). Given a stochastic dataset consisting of nn points in Rd\mathbb{R}^d each of which has an existence probability, a SCH refers to the convex hull of a realization of the dataset, i.e., a random sample including each point with its existence probability. We are interested in computing certain expected statistics of a SCH, including diameter, width, and combinatorial complexity. For diameter, we establish the first deterministic 1.633-approximation algorithm with a time complexity polynomial in both nn and dd. For width, two approximation algorithms are provided: a deterministic O(1)O(1)-approximation running in O(nd+1logn)O(n^{d+1} \log n) time, and a fully polynomial-time randomized approximation scheme (FPRAS). For combinatorial complexity, we propose an exact O(nd)O(n^d)-time algorithm. Our solutions exploit many geometric insights in Euclidean space, some of which might be of independent interest

    Integer Polynomial Optimization in Fixed Dimension

    Full text link
    We classify, according to their computational complexity, integer optimization problems whose constraints and objective functions are polynomials with integer coefficients and the number of variables is fixed. For the optimization of an integer polynomial over the lattice points of a convex polytope, we show an algorithm to compute lower and upper bounds for the optimal value. For polynomials that are non-negative over the polytope, these sequences of bounds lead to a fully polynomial-time approximation scheme for the optimization problem.Comment: In this revised version we include a stronger complexity bound on our algorithm. Our algorithm is in fact an FPTAS (fully polynomial-time approximation scheme) to maximize a non-negative integer polynomial over the lattice points of a polytop

    Approximation Schemes for a Unit-Demand Buyer with Independent Items via Symmetries

    Full text link
    We consider a revenue-maximizing seller with nn items facing a single buyer. We introduce the notion of symmetric menu complexity of a mechanism, which counts the number of distinct options the buyer may purchase, up to permutations of the items. Our main result is that a mechanism of quasi-polynomial symmetric menu complexity suffices to guarantee a (1ε)(1-\varepsilon)-approximation when the buyer is unit-demand over independent items, even when the value distribution is unbounded, and that this mechanism can be found in quasi-polynomial time. Our key technical result is a polynomial time, (symmetric) menu-complexity-preserving black-box reduction from achieving a (1ε)(1-\varepsilon)-approximation for unbounded valuations that are subadditive over independent items to achieving a (1O(ε))(1-O(\varepsilon))-approximation when the values are bounded (and still subadditive over independent items). We further apply this reduction to deduce approximation schemes for a suite of valuation classes beyond our main result. Finally, we show that selling separately (which has exponential menu complexity) can be approximated up to a (1ε)(1-\varepsilon) factor with a menu of efficient-linear (f(ε)n)(f(\varepsilon) \cdot n) symmetric menu complexity.Comment: FOCS 201

    Hybrid Rounding Techniques for Knapsack Problems

    Get PDF
    We address the classical knapsack problem and a variant in which an upper bound is imposed on the number of items that can be selected. We show that appropriate combinations of rounding techniques yield novel and powerful ways of rounding. As an application of these techniques, we present a linear-storage Polynomial Time Approximation Scheme (PTAS) and a Fully Polynomial Time Approximation Scheme (FPTAS) that compute an approximate solution, of any fixed accuracy, in linear time. This linear complexity bound gives a substantial improvement of the best previously known polynomial bounds.Comment: 19 LaTeX page

    Digraph Complexity Measures and Applications in Formal Language Theory

    Full text link
    We investigate structural complexity measures on digraphs, in particular the cycle rank. This concept is intimately related to a classical topic in formal language theory, namely the star height of regular languages. We explore this connection, and obtain several new algorithmic insights regarding both cycle rank and star height. Among other results, we show that computing the cycle rank is NP-complete, even for sparse digraphs of maximum outdegree 2. Notwithstanding, we provide both a polynomial-time approximation algorithm and an exponential-time exact algorithm for this problem. The former algorithm yields an O((log n)^(3/2))- approximation in polynomial time, whereas the latter yields the optimum solution, and runs in time and space O*(1.9129^n) on digraphs of maximum outdegree at most two. Regarding the star height problem, we identify a subclass of the regular languages for which we can precisely determine the computational complexity of the star height problem. Namely, the star height problem for bideterministic languages is NP-complete, and this holds already for binary alphabets. Then we translate the algorithmic results concerning cycle rank to the bideterministic star height problem, thus giving a polynomial-time approximation as well as a reasonably fast exact exponential algorithm for bideterministic star height.Comment: 19 pages, 1 figur

    On the complexity of nonlinear mixed-integer optimization

    Full text link
    This is a survey on the computational complexity of nonlinear mixed-integer optimization. It highlights a selection of important topics, ranging from incomputability results that arise from number theory and logic, to recently obtained fully polynomial time approximation schemes in fixed dimension, and to strongly polynomial-time algorithms for special cases.Comment: 26 pages, 5 figures; to appear in: Mixed-Integer Nonlinear Optimization, IMA Volumes, Springer-Verla

    Silent MST approximation for tiny memory

    Get PDF
    In network distributed computing, minimum spanning tree (MST) is one of the key problems, and silent self-stabilization one of the most demanding fault-tolerance properties. For this problem and this model, a polynomial-time algorithm with O(log2 ⁣n)O(\log^2\!n) memory is known for the state model. This is memory optimal for weights in the classic [1,poly(n)][1,\text{poly}(n)] range (where nn is the size of the network). In this paper, we go below this O(log2 ⁣n)O(\log^2\!n) memory, using approximation and parametrized complexity. More specifically, our contributions are two-fold. We introduce a second parameter~ss, which is the space needed to encode a weight, and we design a silent polynomial-time self-stabilizing algorithm, with space O(logns)O(\log n \cdot s). In turn, this allows us to get an approximation algorithm for the problem, with a trade-off between the approximation ratio of the solution and the space used. For polynomial weights, this trade-off goes smoothly from memory O(logn)O(\log n) for an nn-approximation, to memory O(log2 ⁣n)O(\log^2\!n) for exact solutions, with for example memory O(lognloglogn)O(\log n\log\log n) for a 2-approximation
    corecore