2019
DOI: 10.1101/716852
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Adding Extra Knowledge in Scalable Learning of Sparse Differential Gaussian Graphical Models

Abstract: We focus on integrating different types of extra knowledge (other than the observed samples) for estimating the sparse structure change between two p-dimensional Gaussian Graphical Models (i.e. differential GGMs). Previous differential GGM estimators either fail to include additional knowledge or cannot scale up to a highdimensional (large p) situation. This paper proposes a novel method KDiffNet that incorporates Additional Knowledge in identifying Differential Networks via an Elementary Estimator. We design … Show more

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