27,813 research outputs found

    The linearization problem of a binary quadratic problem and its applications

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    We provide several applications of the linearization problem of a binary quadratic problem. We propose a new lower bounding strategy, called the linearization-based scheme, that is based on a simple certificate for a quadratic function to be non-negative on the feasible set. Each linearization-based bound requires a set of linearizable matrices as an input. We prove that the Generalized Gilmore-Lawler bounding scheme for binary quadratic problems provides linearization-based bounds. Moreover, we show that the bound obtained from the first level reformulation linearization technique is also a type of linearization-based bound, which enables us to provide a comparison among mentioned bounds. However, the strongest linearization-based bound is the one that uses the full characterization of the set of linearizable matrices. Finally, we present a polynomial-time algorithm for the linearization problem of the quadratic shortest path problem on directed acyclic graphs. Our algorithm gives a complete characterization of the set of linearizable matrices for the quadratic shortest path problem

    Strongly polynomial algorithm for a class of minimum-cost flow problems with separable convex objectives

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    A well-studied nonlinear extension of the minimum-cost flow problem is to minimize the objective βˆ‘ij∈ECij(fij)\sum_{ij\in E} C_{ij}(f_{ij}) over feasible flows ff, where on every arc ijij of the network, CijC_{ij} is a convex function. We give a strongly polynomial algorithm for the case when all CijC_{ij}'s are convex quadratic functions, settling an open problem raised e.g. by Hochbaum [1994]. We also give strongly polynomial algorithms for computing market equilibria in Fisher markets with linear utilities and with spending constraint utilities, that can be formulated in this framework (see Shmyrev [2009], Devanur et al. [2011]). For the latter class this resolves an open question raised by Vazirani [2010]. The running time is O(m4log⁑m)O(m^4\log m) for quadratic costs, O(n4+n2(m+nlog⁑n)log⁑n)O(n^4+n^2(m+n\log n)\log n) for Fisher's markets with linear utilities and O(mn3+m2(m+nlog⁑n)log⁑m)O(mn^3 +m^2(m+n\log n)\log m) for spending constraint utilities. All these algorithms are presented in a common framework that addresses the general problem setting. Whereas it is impossible to give a strongly polynomial algorithm for the general problem even in an approximate sense (see Hochbaum [1994]), we show that assuming the existence of certain black-box oracles, one can give an algorithm using a strongly polynomial number of arithmetic operations and oracle calls only. The particular algorithms can be derived by implementing these oracles in the respective settings

    Computational Geometry Column 42

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    A compendium of thirty previously published open problems in computational geometry is presented.Comment: 7 pages; 72 reference
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