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Distributed statistical inference for massive data

Song Xi Chen, Liuhua Peng

2021The Annals of Statistics31 citationsDOI

Abstract

This paper considers distributed statistical inference for general symmetric statistics in the context of massive data with efficient computation. Estimation efficiency and asymptotic distributions of the distributed statistics are provided, which reveal different results between the nondegenerate and degenerate cases, and show the number of the data subsets plays an important role. Two distributed bootstrap methods are proposed and analyzed to approximation the underlying distribution of the distributed statistics with improved computation efficiency over existing methods. The accuracy of the distributional approximation by the bootstrap are studied theoretically. One of the methods, the pseudo-distributed bootstrap, is particularly attractive if the number of datasets is large as it directly resamples the subset-based statistics, assumes less stringent conditions and its performance can be improved by studentization.

Topics & Concepts

Statistical inferenceInferenceMathematicsComputationStatisticsContext (archaeology)Statistical hypothesis testingComputational statisticsComputer scienceAlgorithmArtificial intelligencePaleontologyBiologyStatistical Methods and InferenceMarkov Chains and Monte Carlo MethodsBayesian Methods and Mixture Models