Huang Delin, Tan Xiaojun, Chen Nanjie, Fan Zhengping
School of Intelligent Systems Engineering, Sun Yat-sen University, Shenzhen 518107, China.
Sensors (Basel). 2022 Mar 11;22(6):2191. doi: 10.3390/s22062191.
Many transport systems in the real world can be modeled as networked systems. Due to limited resources, only a few nodes can be selected as seeds in the system, whose role is to spread required information or control signals as widely as possible. This problem can be modeled as the influence maximization problem. Most of the existing selection strategies are based on the invariable network structure and have not touched upon the condition that the network is under structural failures. Related studies indicate that such strategies may not completely tackle complicated diffusion tasks in reality, and the robustness of the information diffusion process against perturbances is significant. To give a numerical performance criterion of seeds under structural failure, a measure has been developed to define the robust influence maximization (RIM) problem. Further, a memetic optimization algorithm (MA) which includes several problem-orientated operators to improve the search ability, termed RIMMA, has been presented to deal with the RIM problem. Experimental results on synthetic networks and real-world networks validate the effectiveness of RIMMA, its superiority over existing approaches is also shown.
现实世界中的许多传输系统都可以建模为网络系统。由于资源有限,系统中只能选择少数节点作为种子节点,其作用是尽可能广泛地传播所需信息或控制信号。这个问题可以建模为影响力最大化问题。现有的大多数选择策略都是基于不变的网络结构,尚未涉及网络处于结构故障的情况。相关研究表明,此类策略可能无法完全解决现实中复杂的扩散任务,信息扩散过程对扰动的鲁棒性很重要。为了给出结构故障下种子节点的数值性能标准,已经开发了一种度量来定义鲁棒影响力最大化(RIM)问题。此外,还提出了一种包含几个面向问题的算子以提高搜索能力的混合优化算法(MA),称为RIMMA,来处理RIM问题。在合成网络和真实网络上的实验结果验证了RIMMA的有效性,也显示了它相对于现有方法的优越性。