College of Computer Science, Kookmin University, Seoul 02707, Korea.
Department of Information and Telecommunication Engineering, Incheon National University, Incheon 22012, Korea.
Sensors (Basel). 2021 Mar 9;21(5):1905. doi: 10.3390/s21051905.
Recently, researchers have paid attention to many types of huge networks such as the Internet of Things, sensor networks, social networks, and traffic networks because of their untapped potential for theoretical and practical outcomes. A major obstacle in studying large-scale networks is that their size tends to increase exponentially. In addition, access to large network databases is limited for security or physical connection reasons. In this paper, we propose a novel sampling method that works effectively for large-scale networks. The proposed approach makes multiple heterogeneous Markov chains by adjusting random-walk traits on the given network to explore the target space efficiently. This approach provides better unbiased sampling results with reduced asymptotic variance within reasonable execution time than previous random-walk-based sampling approaches. We perform various experiments on large networks databases obtained from synthesis to real-world applications. The results demonstrate that the proposed method outperforms existing network sampling methods.
最近,由于具有巨大的理论和实际应用潜力,研究人员开始关注物联网、传感器网络、社交网络和交通网络等多种类型的大型网络。研究大规模网络的一个主要障碍是它们的大小往往呈指数级增长。此外,出于安全或物理连接的原因,访问大型网络数据库受到限制。在本文中,我们提出了一种新颖的采样方法,该方法可有效地用于大规模网络。所提出的方法通过调整给定网络上的随机游走特性,生成多个异构马尔可夫链,从而有效地探索目标空间。与基于随机游走的采样方法相比,该方法在合理的执行时间内提供了更好的无偏采样结果,且渐近方差更小。我们在从合成到实际应用的各种大型网络数据库上进行了各种实验。结果表明,所提出的方法优于现有的网络采样方法。