2025
DOI: 10.5705/ss.202022.0157
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Distributed Mean Dimension Reduction Through Semi-parametric Approaches

Abstract: In the present article we recast the semi-parametric mean dimension reduction approaches under a least squares framework, which turns the problem of recovering the central mean subspace into a series of problems of estimating slopes in linear regressions. It also facilitates to incorporate penalties to produce sparse solutions. We further adapt the semi-parametric mean dimension reduction approaches to distributed settings when massive data are scattered at various locations and cannot be aggregated or process… Show more

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