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Stochastic approximation algorithms for rumor source inference on graphs

机译:图上谣言源推断的随机近似算法

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We revisit the classical problem of identifying the source of rumor in a network, assumed unique, treating as given the network topology and the set of rumor infected nodes. In addition, it is assumed that some partial information about the order in which the nodes were infected, is also available. Such form of information is commonly available to network monitoring agencies. Under this premise, we propose a class of estimators that is agnostic to the underlying stochastic model of rumor spread and further, generalizes other estimators popular in literature, e.g., rumor center, distance center and Jordan center. We also develop an MCMC-based stochastic approximation framework to implement this class of estimators. Results from extensive simulations on the Ercleis-Renyi and Barabasi-Albert random graph models indicate promising empirical performance and robustness of the proposed estimators to different graph topologies. Our stochastic approximation framework also extends easily to general statistical inference problems on graphs that are of combinatorial nature. In particular, we demonstrate a suitable modification of our framework that makes it amenable to be used for the popular problem of rank aggregation from noisy pairwise comparisons. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们重新审视了识别网络中谣言来源的经典问题(假设是唯一的),将其视为给定的网络拓扑和谣言感染节点的集合。另外,假设还可以获得一些有关节点感染顺序的部分信息。网络监视机构通常可以使用这种形式的信息。在此前提下,我们提出了一类与谣言传播的潜在随机模型无关的估计器,并且进一步归纳了文学界流行的其他估计器,例如,谣言中心,距离中心和约旦中心。我们还开发了基于MCMC的随机逼近框架来实现此类估算器。在Ercleis-Renyi和Barabasi-Albert随机图模型上进行的大量仿真结果表明,所提出的估计器对不同图拓扑的实验性能和鲁棒性都很好。我们的随机近似框架还可以轻松地扩展到具有组合性质的图上的一般统计推断问题。特别是,我们展示了对我们框架的适当修改,使其可以用于嘈杂的成对比较中普遍存在的秩聚合问题。 (C)2019 Elsevier B.V.保留所有权利。

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