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On the Statistical Efficiency of _1,p Multi-Task Learning of Gaussian Graphical Models

2012-07-18Unverified0· sign in to hype

Jean Honorio, Tommi Jaakkola, Dimitris Samaras

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Abstract

In this paper, we present _1,p multi-task structure learning for Gaussian graphical models. We analyze the sufficient number of samples for the correct recovery of the support union and edge signs. We also analyze the necessary number of samples for any conceivable method by providing information-theoretic lower bounds. We compare the statistical efficiency of multi-task learning versus that of single-task learning. For experiments, we use a block coordinate descent method that is provably convergent and generates a sequence of positive definite solutions. We provide experimental validation on synthetic data as well as on two publicly available real-world data sets, including functional magnetic resonance imaging and gene expression data.

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