2022
DOI: 10.1002/sam.11592
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Distributed dimension reduction with nearly oracle rate

Abstract: We consider sufficient dimension reduction for heterogeneous massive data. We show that, even in the presence of heterogeneity and nonlinear dependence, the minimizers of convex loss functions of linear regression fall into the central subspace at the population level. We suggest a distributed algorithm to perform sufficient dimension reduction, where the convex loss functions are approximated with surrogate quadratic losses. This allows to perform dimension reduction in a unified least squares framework and f… Show more

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