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Estimating Diffusion Network Structures: Recovery Conditions Sample Complexity Soft-thresholding Algorithm

机译:估计扩散网络结构:恢复条件样本复杂度和软阈值算法

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摘要

Information spreads across social and technological networks, but often the network structures are hidden from us and we only observe the traces left by the diffusion processes, called cascades. Can we recover the hidden network structures from these observed cascades? What kind of cascades and how many cascades do we need? Are there some network structures which are more difficult than others to recover? Can we design efficient inference algorithms with provable guarantees?Despite the increasing availability of cascade-data and methods for inferring networks from these data, a thorough theoretical understanding of the above questions remains largely unexplored in the literature. In this paper, we investigate the network structure inference problem for a general family of continuous-time diffusion models using an ℓ1-regularized likelihood maximization framework. We show that, as long as the cascade sampling process satisfies a natural incoherence condition, our framework can recover the correct network structure with high probability if we observe O(d3 log N) cascades, where d is the maximum number of parents of a node and N is the total number of nodes. Moreover, we develop a simple and efficient soft-thresholding inference algorithm, which we use to illustrate the consequences of our theoretical results, and show that our framework outperforms other alternatives in practice.
机译:信息遍布社会和技术网络,但是网络结构通常对我们是隐藏的,我们只观察到扩散过程留下的痕迹,称为级联。我们能否从这些观察到的级联中恢复隐藏的网络结构?我们需要哪种级联,需要多少级联?是否存在某些网络结构比其他结构更难恢复?尽管可以使用级联数据和从这些数据推断网络的方法的可用性不断提高,但我们仍无法设计出具有可证明保证的高效推理算法吗?在本文中,我们使用ℓ1正则化似然最大化框架研究了一般连续时间扩散模型系列的网络结构推断问题。我们证明,只要级联采样过程满足自然的非相干条件,如果我们观察到O(d 3 log N)级联,其中d为一个节点的最大父节点数,N是节点的总数。此外,我们开发了一种简单有效的软阈值推理算法,可用于说明理论结果的后果,并表明我们的框架在实践中优于其他方法。

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