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Controlling Directed Networks With Evolving Topologies

机译:控制具有不断变化的拓扑的定向网络

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Exploring how network topologies affect the cost of controlling the networks is an important issue in both theory and application. However, its solution still remains open due to the difficulty in analyzing the characteristics of networks. In this paper, a matrix function optimization model is proposed to study how the network topology evolves when the objective is to achieve optimal control of directed networks. By introducing an l-chain rule to obtain the direction of network topology evolution, a normalized and projected gradient-descent method (NPGM) is developed to solve the proposed optimization model. It is proven that the NPGM linearly converges to a local minimum point. We further derive an optimality condition to determine whether a converged solution is global minimum or not, and such a condition is also verified through numerous experimental tests on directed networks. We find that a network adaptively changes its topology in such a way that many subnetworks are gradually evolved toward a preestablished control target. Our finding enables us to model and explain how real-world complex networks adaptively self-organize themselves to many similar subnetworks during a relatively long evolution process.
机译:探索网络拓扑如何影响控制网络的成本是理论和应用中的一个重要问题。然而,由于分析网络的特征,其解决方案仍然仍然是开放的。在本文中,提出了一种矩阵函数优化模型来研究网络拓扑在目标是实现定向网络的最佳控制时的发展。通过引入L链规则来获得网络拓扑演化的方向,开发了归一化和投影的梯度 - 下降方法(NPGM)以解决所提出的优化模型。据证明,NPGM线性会聚到局部最小点。我们进一步推出了最优性条件以确定融合的解决方案是否是全局最小的,并且还通过对导向网络的许多实验测试来验证这种情况。我们发现网络自适应地改变其拓扑,使许多子网逐渐发展朝向预先建立的控制目标。我们的发现使我们能够建模并解释现实世界的复杂网络如何在相对较长的演变过程中自适应地自动组织到许多类似的子网。

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