Yuan Wu-Jie, Zhou Jian-Fang, Li Qun, Chen De-Bao, Wang Zhen
College of Physics and Electronic Information, Huaibei Normal University, Huaibei 235000, China and Department of Physics, Hong Kong Baptist University, Kowloon Tong, Hong Kong.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Aug;88(2):022818. doi: 10.1103/PhysRevE.88.022818. Epub 2013 Aug 29.
Inspired by the anti-Hebbian learning rule in neural systems, we study how the feedback from dynamical synchronization shapes network structure by adding new links. Through extensive numerical simulations, we find that an adaptive network spontaneously forms scale-free structure, as confirmed in many real systems. Moreover, the adaptive process produces two nontrivial power-law behaviors of deviation strength from mean activity of the network and negative degree correlation, which exists widely in technological and biological networks. Importantly, these scalings are robust to variation of the adaptive network parameters, which may have meaningful implications in the scale-free formation and manipulation of dynamical networks. Our study thus suggests an alternative adaptive mechanism for the formation of scale-free structure with negative degree correlation, which means that nodes of high degree tend to connect, on average, with others of low degree and vice versa. The relevance of the results to structure formation and dynamical property in neural networks is briefly discussed as well.
受神经系统中反赫布学习规则的启发,我们研究了动态同步反馈如何通过添加新链接来塑造网络结构。通过广泛的数值模拟,我们发现自适应网络会自发形成无标度结构,这在许多实际系统中都得到了证实。此外,自适应过程产生了网络平均活动偏差强度的两种非平凡幂律行为以及负度相关性,这在技术和生物网络中广泛存在。重要的是,这些标度对于自适应网络参数的变化具有鲁棒性,这可能对动态网络的无标度形成和操纵具有有意义的影响。因此,我们的研究提出了一种形成具有负度相关性的无标度结构的替代自适应机制,即平均而言,高度节点倾向于与低度节点连接,反之亦然。我们还简要讨论了这些结果与神经网络中结构形成和动态特性的相关性。