首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Approximating a solution of the s-t max-cut problem with a deterministic annealing algorithm.
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Approximating a solution of the s-t max-cut problem with a deterministic annealing algorithm.

机译:用确定性退火算法逼近s-t最大割问题的解。

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摘要

The s-t max-cut problem is an NP-hard combinatorial optimization problem. In this paper an equivalent linearly constrained continuous optimization problem is formulated and an algorithm is proposed for approximating its solution. The algorithm is derived from an application of a logarithmic barrier function, where the barrier parameter behaves as temperature in an annealing procedure and decreases to zero from a sufficiently large positive number satisfying that the barrier function is convex. The algorithm searches for a better solution in a feasible descent direction, which has a desired property that lower and upper bounds are always satisfied automatically if the step length is a number between zero and one. We prove that the algorithm converges to at least a local minimum point if a local minimum point of the barrier problem is generated for a sequence of descending values of the barrier parameter with zero limit. Numerical results show that the algorithm seems effective and efficient.
机译:s-t最大割问题是NP-hard组合优化问题。本文提出了一个等效的线性约束连续优化问题,并提出了一种近似求解的算法。该算法源自对数势垒函数的应用,其中势垒参数在退火过程中表现为温度,并从满足势垒函数凸的足够大的正数减小到零。该算法在可行的下降方向上搜索更好的解决方案,该解决方案具有所需的属性:如果步长为零到一之间的数字,则始终自动满足下限和上限。我们证明,如果针对障碍物参数具有零极限的一系列下降值生成障碍问题的局部最小点,则该算法至少收敛至局部最小点。数值结果表明,该算法是有效的。

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