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DIVIDE-AND-CONQUER TOMOGRAPHY FOR LARGE-SCALE NETWORKS

机译:用于大型网络的分割和征服断层扫描

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This work considers the problem of reconstructing the topology of a network of interacting agents via observations of the state-evolution of the agents. Observations from only a subset of the nodes are collected, and the information is used to infer their local connectivity (local tomography). Recent results establish that, under suitable conditions on the network model, local tomography is achievable with high probability as the network size scales to infinity [1], [2]. Motivated by these results, we explore the possibility of reconstructing a larger network via repeated application of the local tomography algorithm to smaller network portions. A divide-and-conquer strategy is developed and tested numerically on some illustrative examples.
机译:这项工作考虑通过观察药剂的状态演化来重建相互作用剂网络拓扑的问题。收集来自节点的子集的观察,并且该信息用于推断它们的本地连接(本地断层扫描)。最近的结果确定,在网络模型的合适条件下,局部断层扫描可实现高概率,因为网络大小缩放到无穷大[1],[2]。通过这些结果激励,我们探讨了通过重复应用局部断层扫描算法来重建较大网络的可能性到较小的网络部分。在一些说明性实例上以数值开发和测试划分和征服策略。

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