Efficient estimation of conditional covariance matrices for dimension reduction
Abstract
Let X∈ Rp and Y∈ R. In this paper we propose an estimator of the conditional covariance matrix, Cov(E[X Y]), in an inverse regression setting. Based on the estimation of a quadratic functional, this methodology provides an efficient estimator from a semi parametric point of view. We consider a functional Taylor expansion of Cov(E[X Y]) under some mild conditions and the effect of using an estimate of the unknown joint distribution. The asymptotic properties of this estimator are also provided.
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