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SOLVING MAXIMUM INDEPENDENT SET BY ASYNCHRONOUS DISTRIBUTED HOPFIELD-TYPE NEURAL NETWORKS

机译:用异步分布式霍普尔型神经网络求解最大独立集

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摘要

We propose a heuristic for solving the maximum independent set problem for a set of processors in a network with arbitrary topology. We assume an asynchronous model of computation and we use modified Hopfield neural networks to find high quality solutions. We analyze the algorithm in terms of the number of rounds necessary to find admissible solutions both in the worst case (theoretical analysis) and in the average case (experimental Analysis). We show that our heuristic is better than the greedy one at 1% significance level.
机译:我们提出一种启发式方法,用于解决具有任意拓扑的网络中一组处理器的最大独立集问题。我们假设计算的异步模型,并且使用改进的Hopfield神经网络来找到高质量的解决方案。我们根据在最坏情况(理论分析)和平均情况(实验分析)中寻找可取解所需的轮数分析算法。我们表明,在1%的显着性水平下,我们的启发式方法比贪婪的方法要好。

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