最大团问题的并行神经网络计算

K.C. Lee, N. Funabiki, Y.B. Cho, Yoshiyasu Takefuji
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引用次数: 4

摘要

提出了一种新的大规模最大团问题的计算模型并进行了验证。首先将最大团问题表述为一个无约束的二次0 - 1规划问题,并在新构造的图中通过最小化同一分区上的权值和来求解最大团问题。所提出的极大值神经网络具有以下优点:(1)极大值神经网络不需要对运动方程进行系数参数整定,而传统神经网络则需要对运动方程进行系数参数整定;(2)为了终止算法,明确定义了最大神经网络的平衡状态,而现有神经网络没有明确的定义;(3)极大值神经网络总是允许系统的状态收敛到可行解,而现有的神经网络不能保证这一点。针对传统的分支定界法由于计算时间呈指数级增长而无法使用的问题,本文提出的并行算法在求解质量基本相同的情况下,在计算时间上优于现有的并行算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A parallel neural network computing for the maximum clique problem
A novel computational model for large-scale maximum clique problems is proposed and tested. The maximum clique problem is first formulated as an unconstrained quadratic zero-one programming and it is solved by minimizing the weight summation over the same partition in a newly constructed graph. The proposed maximum neural network has the following advantages: (1) coefficient-parameter tuning in the motion equation is not required in the maximum neural network while the conventional neural networks suffer from it; (2) the equilibrium state of the maximum neural network is clearly defined in order to terminate the algorithm, while the existing neural networks do not have the clear definition; and (3) the maximum neural network always allows the state of the system to converge to the feasible solution, while the existing neural networks cannot guarantee it. The proposed parallel algorithm for large-size problems outperforms the best known algorithms in terms of computation time with much the same solution quality where the conventional branch-and-bound method cannot be used due to the exponentially increasing computation time.<>
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