Center for Complex Network Research and Department of Physics, Northeastern University, Boston, Massachusetts 02115, USA.
Sci Rep. 2013;3:2354. doi: 10.1038/srep02354.
Controlling complex systems is a fundamental challenge of network science. Recent advances indicate that control over the system can be achieved through a minimum driver node set (MDS). The existence of multiple MDS's suggests that nodes do not participate in control equally, prompting us to quantify their participations. Here we introduce control capacity quantifying the likelihood that a node is a driver node. To efficiently measure this quantity, we develop a random sampling algorithm. This algorithm not only provides a statistical estimate of the control capacity, but also bridges the gap between multiple microscopic control configurations and macroscopic properties of the network under control. We demonstrate that the possibility of being a driver node decreases with a node's in-degree and is independent of its out-degree. Given the inherent multiplicity of MDS's, our findings offer tools to explore control in various complex systems.
控制复杂系统是网络科学的一个基本挑战。最近的进展表明,可以通过最小驱动节点集 (MDS) 实现对系统的控制。多个 MDS 的存在表明节点在控制中并非平等参与,这促使我们对它们的参与程度进行量化。在这里,我们引入控制能力来量化节点成为驱动节点的可能性。为了有效地测量这个数量,我们开发了一个随机抽样算法。该算法不仅提供了控制能力的统计估计,还弥合了多个微观控制配置与受控网络宏观性质之间的差距。我们证明了成为驱动节点的可能性随着节点的入度的增加而降低,并且与节点的出度无关。鉴于 MDS 的固有多重性,我们的研究结果为探索各种复杂系统中的控制提供了工具。