首页> 外文会议>Advanced Engineering Computing and Applications in Sciences, 2009. ADVCOMP '09 >Multi-objective Optimization of Graph Partitioning Using Genetic Algorithms
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Multi-objective Optimization of Graph Partitioning Using Genetic Algorithms

机译:基于遗传算法的图划分多目标优化

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Graph partitioning is a NP-hard problem with multiple conflicting objectives. The graph partitioning should minimize the inter-partition relationship while maximizing the intra-partition relationship. Furthermore, the partition load should be evenly distributed over the respective partitions. Therefore this is a multi-objective optimization problem. There are two approaches to multi-objective optimization using genetic algorithms: weighted cost functions and finding the Pareto front. We have used the Pareto front method to find the suitable curve of non-dominated solutions, composed of a high number of solutions. The proposed methods of this paper used to improve the performance are injecting best solutions of previous runs into the first generation of next runs and also storing the non-dominated set of previous generations to combine with later generation's non-dominated set. These improvements prevent the GA from getting stuck in the local optima and make the search more efficient and increase the probability of finding more optimal solutions. Finally, a simulation research is carried out to investigate the effectiveness of the proposed algorithm. The simulation results confirm the effectiveness of the proposed multi-objective GA method.
机译:图分区是具有多个冲突目标的NP难题。图分区应该使分区间关系最小化,同时使分区内关系最大化。此外,分区负载应均匀地分布在各个分区上。因此,这是一个多目标优化问题。使用遗传算法进行多目标优化的方法有两种:加权成本函数和找到Pareto前沿。我们已经使用帕累托前沿方法来找到由大量解组成的非支配解的合适曲线。本文提出的用于提高性能的方法是将前一轮的最佳解决方案注入下一轮的第一代中,并且还存储前几代的非支配集合以与后代的非支配集合组合。这些改进可防止GA陷入局部最优情况,并使搜索效率更高,并增加找到更多最优解的可能性。最后,通过仿真研究来研究所提算法的有效性。仿真结果证实了所提出的多目标遗传算法的有效性。

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