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Parameter Learning for Latent Network Diffusion

机译:潜在网络扩散的参数学习

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Diffusion processes in networks are increasingly used to model dynamic phenomena such as the spread of information,wildlife,or social influence.Our work addresses the problem of learning the underlying parameters that govern such a diffusion process by observing the time at which nodes become active.A key advantage of our approach is that,unlike previous work,it can tolerate missing observations for some nodes in the diffusion process.Having incomplete observations is characteristic of offline networks used to model the spread of wildlife.We develop an EM algorithm to address parameter learning in such settings.Since both the E and M steps are computationally challenging,we employ a number of optimization methods such as nonlinear and difference-of-convex programming to address these challenges.Evaluation of the approach on the Red-cockaded Woodpecker conservation problem shows that it is highly robust and accurately learns parameters in various settings,even with more than 80% missing data.
机译:网络中的扩散过程越来越多地用于对诸如信息传播,野生生物或社会影响之类的动态现象进行建模。我们的工作通过观察节点活跃的时间来解决学习控制这种扩散过程的基本参数的问题。我们的方法的一个关键优势是,与以前的工作不同,它可以容忍扩散过程中某些节点的缺失观测值。观测值不完整是用于模拟野生生物传播的离线网络的特征。我们开发了一种用于解决参数问题的EM算法在这种情况下学习。由于E和M步骤都在计算上具有挑战性,因此我们采用了许多优化方法,例如非线性和凸差编程,以解决这些挑战。对Red-cockaded Woodpecker守恒问题的方法进行了评估表明它具有很高的鲁棒性,可以准确地学习各种设置下的参数,即使丢失了80%以上数据。

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