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A Multilevel Algorithm for Large Unconstrained Binary Quadratic Optimization

机译:大型无约束二进制二次优化的多级算法

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The unconstrained binary quadratic programming (UBQP) problem is a general NP-hard problem with various applications. In this paper, we present a multilevel algorithm designed to approximate large UBQP instances. The proposed multilevel algorithm is composed of a backbone-based coarsening phase, an asymmetric uncoarsening phase and a memetic refinement phase, where the backbone-based procedure and the memetic refinement procedure make use of tabu search to obtain improved solutions. Evaluated on a set of 11 largest instances from the literature (with 5000 to 7000 variables), the proposed algorithm proves to be able to attain all the best known values with a computing effort less than any existing approach.
机译:无约束二进制二次规划(UBQP)问题是具有各种应用程序的一般NP难题。在本文中,我们提出了一种用于近似大型UBQP实例的多级算法。提出的多级算法由基于主干的粗化阶段,不对称的不粗化阶段和模因细化阶段组成,其中基于主干的过程和模因细化过程利用禁忌搜索来获得改进的解。对文献中的11个最大实例(具有5000到7000个变量)进行了评估,该算法被证明能够以比任何现有方法更少的计算量来获得所有最知名的值。

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