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Variational Network Inference: Strong and Stable with Concrete Support

机译:可变网络推断:在具体支持下强大而稳定

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Traditional methods for the discovery of latent network structures are limited in two ways: they either assume that all the signal comes from the network (i.e. there is no source of signal outside the network) or they place constraints on the network parameters to ensure model or algorithmic stability. We address these limitations by proposing a model that incorporates a Gaussian process prior on a network-independent component and formally proving that we get algorithmic stability for free while providing a novel perspective on model stability as well as robustness results and precise intervals for key inference parameters. We show that, on three applications, our approach outperforms previous methods consistently.
机译:发现潜在网络结构的传统方法受到两种方式的限制:它们要么假设所有信号都来自网络(即网络外部没有信号源),要么对网络参数施加约束以确保模型或算法稳定性。通过提出一个模型,该模型在与网络无关的组件上先合并了高斯过程,从而解决了这些限制,并正式证明我们免费获得算法稳定性,同时提供了模型稳定性以及鲁棒性结果和关键推理参数的精确区间的新颖观点。我们显示,在三个应用程序中,我们的方法始终优于以前的方法。

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