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Graph Partitioning via Recurrent Multivalued Neural Networks

机译:通过反复化多值神经网络进行图分隔

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In this work, the well-known Graph Partitioning (GP) problem for undirected weighted graphs has been studied from two points of view: maximizing (MaxCut) or minimizing (MinCut) the cost of the cut induced in the graph by the partition. An unified model, based on a neural technique for optimization problems, has been applied to these two concrete problems. A detailed description of the model is presented, and the technique to minimize an energy function, that measures the goodness of solutions, is fully described. Some techniques to escape from local optima are presented as well. It has proved to be a very competitive and efficient algorithm, in terms of quality of solutions and computational time, when compared to the state-of-the-art methods. Some simulation results are presented in this paper, to show the comparative efficiency of the methods.
机译:在这项工作中,已经从两个视点研究了无向加权图的众所周知的图形分区(GP)问题:最大化(MaxCut)或最小化(MinCut)分区在图中引起的切割的成本。基于神经技术进行优化问题的统一模型已经应用于这两个具体问题。提供了对模型的详细描述,并充分描述了测量溶液良好度的能量函数最小化的技术。展示了一些逃离本地Optima的技术。与最先进的方法相比,它已被证明是一种非常竞争力,高效的算法,以及解决方案的质量和计算时间。本文提出了一些仿真结果,表明了方法的比较效率。

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