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arxiv: 1705.09998 · v2 · pith:22LQVXP6new · submitted 2017-05-28 · 📊 stat.CO

Bayesian Bootstraps for Massive Data

classification 📊 stat.CO
keywords algorithmsbayesianbootstrapbootstrapsfrequentistadditionallyallowanalogous
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In this article, we present data-subsetting algorithms that allow for the approximate and scalable implementation of the Bayesian bootstrap. They are analogous to two existing algorithms in the frequentist literature: the bag of little bootstraps (Kleiner et al., 2014) and the subsampled double bootstrap (SDB; Sengupta et al., 2016). Our algorithms have appealing theoretical and computational properties that are comparable to those of their frequentist counterparts. Additionally, we provide a strategy for performing lossless inference for a class of functionals of the Bayesian bootstrap, and briefly introduce extensions to the Dirichlet Process.

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