96 research outputs found

    Experimental evaluation of algorithmic solutions for the maximum generalised network flow problem

    Get PDF
    Also available as Technical Report No. TR-01-09, Department of Computer Science, King's College London, UK, 2001.The maximum generalised network flow problem is to maximise the net flow into a specified node in a network with capacities and gain-loss factors associated with edges. In practice, input instances of this problem are usually solved using general-purpose linear programming codes, but this may change because a number of specialised combinatoria generalised-flow algorithms have been recently proposed. To complement the knwon theoretical analyses of these algorithms, we develop their implementations and investigate their actual performance. We focus in this study on Goldfarb, Jin and Orlin's excess-scaling algorithm and Tardos and Wayne's push-relabel algorithm. We develop variants of these algorithms to implementations of simple, but non-polynomial, combinatorial algorithms proposed by Onaga and Truemper, and with performance of CPLEX, a commercial general-purpose linear progamming package.This work was supported by the EPSRC grant GR/L8146

    Smoothed Analysis of the Minimum-Mean Cycle Canceling Algorithm and the Network Simplex Algorithm

    Get PDF
    The minimum-cost flow (MCF) problem is a fundamental optimization problem with many applications and seems to be well understood. Over the last half century many algorithms have been developed to solve the MCF problem and these algorithms have varying worst-case bounds on their running time. However, these worst-case bounds are not always a good indication of the algorithms' performance in practice. The Network Simplex (NS) algorithm needs an exponential number of iterations for some instances, but it is considered the best algorithm in practice and performs best in experimental studies. On the other hand, the Minimum-Mean Cycle Canceling (MMCC) algorithm is strongly polynomial, but performs badly in experimental studies. To explain these differences in performance in practice we apply the framework of smoothed analysis. We show an upper bound of O(mn2log(n)log(ϕ))O(mn^2\log(n)\log(\phi)) for the number of iterations of the MMCC algorithm. Here nn is the number of nodes, mm is the number of edges, and ϕ\phi is a parameter limiting the degree to which the edge costs are perturbed. We also show a lower bound of Ω(mlog(ϕ))\Omega(m\log(\phi)) for the number of iterations of the MMCC algorithm, which can be strengthened to Ω(mn)\Omega(mn) when ϕ=Θ(n2)\phi=\Theta(n^2). For the number of iterations of the NS algorithm we show a smoothed lower bound of Ω(mmin{n,ϕ}ϕ)\Omega(m \cdot \min \{ n, \phi \} \cdot \phi).Comment: Extended abstract to appear in the proceedings of COCOON 201

    Nonzero-sum Stochastic Games

    Get PDF
    This paper treats of stochastic games. We focus on nonzero-sum games and provide a detailed survey of selected recent results. In Section 1, we consider stochastic Markov games. A correlation of strategies of the players, involving ``public signals'', is described, and a correlated equilibrium theorem proved recently by Nowak and Raghavan for discounted stochastic games with general state space is presented. We also report an extension of this result to a class of undiscounted stochastic games, satisfying some uniform ergodicity condition. Stopping games are related to stochastic Markov games. In Section 2, we describe a version of Dynkin's game related to observation of a Markov process with random assignment mechanism of states to the players. Some recent contributions of the second author in this area are reported. The paper also contains a brief overview of the theory of nonzero-sum stochastic games and stopping games which is very far from being complete

    Fractional combinatorial optimization

    No full text

    On equilibria on the square

    No full text

    Pojedynek głośny-cichy przeciwko głośnemu z równymi funkcjami celności

    No full text
    corecore