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A fast Monte Carlo algorithm for source localization on graphs

机译:一种快速蒙特卡罗算法,用于图形源定位

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Epidemic models on networks have long been studied by biologists and social sciences to determine the steady state levels of an infection on a network. Recently, however, several authors have begun considering the more difficult problem of estimating the source of an infection given information about its behavior some time after the initial infection. In this paper, we describe a technique to estimate the source of an infection on a general graph based on observations from a small set of observers during a fixed time window at some unknown time after the initial infection. We describe an alternate representation for the susceptible-infected (SI) infection model based on geodesic distances on a randomly-weighted version of the graph; this representation allows us to exploit fast algorithms to compute geodesic distances to estimate the marginal distributions for each observer and compute a pseudo-likelihood function that is maximized to find the source.
机译:长期以来已经通过生物学家和社会科学研究了网络的疫情模型,以确定网络上感染的稳态水平。 然而,最近,若干作者已经开始考虑估计感染源的难题估计有关其行为的信息的源于初始感染后的信息更加困难。 在本文中,我们描述了一种基于在初始感染后的一些未知时间的未知时间在固定时间窗口期间的一小组观察者的观察来估计一般图中感染源的技术。 我们描述了基于图表的随机加权版本的大测地距的易感感染(Si)感染模型的替代表示; 该表示允许我们利用快速算法来计算测地距离以估计每个观察者的边际分布,并计算最大化以找到源的伪似然函数。

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