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Multi-objective evolutionary algorithm using problem-specific genetic operators for community detection in networks

机译:使用特定于问题的遗传算子进行网络中的多目标进化算法

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摘要

Automatic network clustering is an important method for mining the meaningful communities of complex networks. Uncovered communities help to understand the potential system structure and functionality. Many algorithms that use multiple optimization criteria and optimize a population of solutions are difficult to apply to real systems because they suffer a long optimization process. In this paper, in order to accelerate the optimization process and to uncover multiple significant community structures more effectively, a multi-objective evolutionary algorithm is proposed and evaluated using problem-specific genetic mutation and group crossover, and problem-specific initialization. Since crossover operators mainly contribute to performance of genetic algorithms, more problem-specific group crossover operators are introduced and evaluated for intelligent evolution of population. The experiments on both artificial and real-world networks demonstrate that the proposed evolutionary algorithm with problem-specific genetic operations has effective performance on discovering the community structure of networks.
机译:自动网络聚类是挖掘复杂网络有意义社区的重要方法。未覆盖的社区有助于了解潜在的系统结构和功能。许多使用多优化标准和优化解决方案群体的算法很难应用于真实系统,因为它们遭受了很长的优化过程。在本文中,为了加速优化过程并更有效地揭示多个重要的社区结构,提出了一种多目标进化算法,并使用特定于问题的基因突变和群体交叉来评估和评估特定于问题的初始化。由于交叉运营商主要有助于遗传算法的性能,因此引入了更多的特定于群体的群体交叉运算符,并评估了人口的智能演化。人工和现实世界网络的实验表明,具有特定于问题的遗传操作的提议进化算法在发现网络的社区结构方面具有有效的性能。

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