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Inferring Social Networks from Outbreaks

机译:从爆发中推断社交网络

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摘要

We consider the problem of inferring the most likely social network given connectivity constraints imposed by observations of outbreaks within the network. Given a set of vertices (or agents) V and constraints (or observations) S_i {is contained in} V we seek to find a minimum log-likelihood cost (or maximum likelihood) set of edges (or connections) E such that each S_i induces a connected subgraph of (V, E). For the offline version of the problem, we prove an Ω(log(n)) hardness of approximation result for uniform cost networks and give an algorithm that almost matches this bound, even for arbitrary costs. Then we consider the online problem, where the constraints are satisfied as they arrive. We give an O(n log(n))-competitive algorithm for the arbitrary cost online problem, which has an Ω(n)-competitive lower bound. We look at the uniform cost case as well and give an O(n~(2/3) log~(2/3)(n))-competitive algorithm against an oblivious adversary, as well as an Ω(n~(1/2))-competitive lower bound against an adaptive adversary. We examine cases when the underlying network graph is known to be a star or a path, and prove matching upper and lower bounds of Θ(log(n)) on the competitive ratio for them.
机译:我们考虑推断最有可能通过网络内爆发的连接限制的最有可能的社交网络的问题。给定一组顶点(或代理)V和约束(或观察)S_I {包含在} V中我们寻求找到最小的日志似然成本(或最大可能性)的边缘(或连接)E,使得每个S_I诱导(V,E)的连接子图。对于问题的脱机版本,我们证明了均匀成本网络的近似结果的Ω(log(n))硬度,并给出了一个几乎与任意成本相匹配的算法。然后我们考虑在线问题,其中约束在到达时满足。我们提供O(n log(n)) - 任意成本在线问题的竞争算法,其具有ω(n) - 竞争性下限。我们看看统一的成本案例,并给出O(n〜(2/3)log〜(2/3)(n)) - 竞争性算法对令人沮丧的对手,以及ω(n〜(1 / 2)) - 对适应对手的竞争下限。当已知底层网络图形是星形或路径时,检查案例,并证明θ(log(n))的上限和下限对它们的竞争比例。

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