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arxiv: 1605.07689 · v3 · pith:UC7NQQX2new · submitted 2016-05-25 · 📊 stat.ML · cs.IT· cs.LG· math.IT· math.OC· stat.ME

Communication-Efficient Distributed Statistical Inference

classification 📊 stat.ML cs.ITcs.LGmath.ITmath.OCstat.ME
keywords communication-efficientestimationinferencebayesiandistributedhigh-dimensionalimproveslikelihood
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We present a Communication-efficient Surrogate Likelihood (CSL) framework for solving distributed statistical inference problems. CSL provides a communication-efficient surrogate to the global likelihood that can be used for low-dimensional estimation, high-dimensional regularized estimation and Bayesian inference. For low-dimensional estimation, CSL provably improves upon naive averaging schemes and facilitates the construction of confidence intervals. For high-dimensional regularized estimation, CSL leads to a minimax-optimal estimator with controlled communication cost. For Bayesian inference, CSL can be used to form a communication-efficient quasi-posterior distribution that converges to the true posterior. This quasi-posterior procedure significantly improves the computational efficiency of MCMC algorithms even in a non-distributed setting. We present both theoretical analysis and experiments to explore the properties of the CSL approximation.

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