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An Evolutionary Multiobjective Framework for Complex Network Reconstruction Using Community Structure

机译:使用社区结构进行复杂网络重建的进化多目标框架

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摘要

The problem of inferring nonlinear and complex dynamical systems from available data is prominent in many fields, including engineering, biological, social, physical, and computer sciences. Many evolutionary algorithm (EA)-based network reconstruction methods have been proposed to address this problem, but they ignore several useful information of network structure, such as community structure, which widely exists in various complex networks. Inspired by the community structure, this article develops a community-based evolutionary multiobjective network reconstruction framework to promote the reconstruction performance of EA-based network reconstruction methods due to their good performance; we refer this framework as CEMO-NR. CEMO-NR is a generic framework and any population-based multiobjective metaheuristic algorithm can be employed as the base optimizer. CEMO-NR employs the community structure of networks to divide the original decision space into multiple small decision spaces, and then any multiobjective EA (MOEA) can be used to search for improved solutions in the reduced decision space. To verify the performance of CEMO-NR, this article also designs a test suite for complex network reconstruction problems. Three representative MOEAs are embedded into CEMO-NR and compared with their original versions, respectively. The experimental results have demonstrated the significant improvement benefiting from the proposed CEMO-NR in 30 multiobjective network reconstruction problems (MONRPs).
机译:从可用数据推断非线性和复杂动力系统的问题在许多领域中突出,包括工程,生物,社会,物理和计算机科学。已经提出了许多进化算法(EA)基于网络重建方法来解决这个问题,但是它们忽略了诸如社区结构的网络结构的几个有用信息,这广泛存在于各种复杂网络中。这篇文章引发了社区结构,开发了一个基于社区的进化多目标网络改造框架,促进了基于EA的网络重建方法的重建性能,因为它们的性能良好;我们将此框架称为CEMO-NR。 CEMO-NR是通用框架,任何基于人口的多目标成群质算法都可以用作基础优化器。 CEMO-NR采用网络的社区结构将原始决策空间划分为多个小型决策空间,然后可以使用任何多目标EA(MOEA)来搜索降低决策空间中的改进的解决方案。为了验证CEMO-NR的性能,本文还为复杂的网络重建问题设计了一个测试套件。三个代表莫斯嵌入CEMO-NR并分别与原始版本进行比较。实验结果表明,在30个多目标网络重建问题(MONRPS)中,从提出的CEMO-NR受益的显着改善。

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