通过哨兵节点观察网络动态

Neil G. MacLaren, Baruch Barzel, Naoki Masuda
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摘要

统计物理学的一个基本前提是,物理系统中的粒子是可以互换的,因此每个特定组件的状态都能代表整个系统。这一假设在复杂的网络中被打破了,因为在复杂的网络中,节点可能是极其多样的,没有一个组件能真正代表整个系统的状态。因此,要观察社会、生物或技术网络的动态,似乎必须提取大量节点的动态状态,而这一任务在实践中往往是令人望而却步的。为了克服这一挑战,我们使用机器学习技术来检测网络的哨兵节点,这是一组网络组件,其组合状态有助于近似整个网络的平均动态。通过这种方法,我们只需跟踪少量精心挑选的节点,就能评估庞大复杂系统的状态。由此产生的哨兵节点集为实际观察复杂网络动态提供了一个天然探针。
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Observing network dynamics through sentinel nodes
A fundamental premise of statistical physics is that the particles in a physical system are interchangeable, and hence the state of each specific component is representative of the system as a whole. This assumption breaks down for complex networks, in which nodes may be extremely diverse, and no single component can truly represent the state of the entire system. It seems, therefore, that to observe the dynamics of social, biological or technological networks, one must extract the dynamic states of a large number of nodes -- a task that is often practically prohibitive. To overcome this challenge, we use machine learning techniques to detect the network's sentinel nodes, a set of network components whose combined states can help approximate the average dynamics of the entire network. The method allows us to assess the state of a large complex system by tracking just a small number of carefully selected nodes. The resulting sentinel node set offers a natural probe by which to practically observe complex network dynamics.
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