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An RKHS formulation of the inverse regression dimension-reduction problem

Abstract

Suppose that YY is a scalar and XX is a second-order stochastic process, where YY and XX are conditionally independent given the random variables ξ1,...,ξp\xi_1,...,\xi_p which belong to the closed span LX2L_X^2 of XX. This paper investigates a unified framework for the inverse regression dimension-reduction problem. It is found that the identification of LX2L_X^2 with the reproducing kernel Hilbert space of XX provides a platform for a seamless extension from the finite- to infinite-dimensional settings. It also facilitates convenient computational algorithms that can be applied to a variety of models.

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