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arxiv: 1709.08795 · v2 · pith:RWUHTEKYnew · submitted 2017-09-26 · 🧮 math.ST · stat.ME· stat.ML· stat.TH

On Stein's Identity and Near-Optimal Estimation in High-dimensional Index Models

classification 🧮 math.ST stat.MEstat.MLstat.TH
keywords modelsestimatorshigh-dimensionalindexnear-optimalscoresteinachieves
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We consider estimating the parametric components of semi-parametric multiple index models in a high-dimensional and non-Gaussian setting. Such models form a rich class of non-linear models with applications to signal processing, machine learning and statistics. Our estimators leverage the score function based first and second-order Stein's identities and do not require the covariates to satisfy Gaussian or elliptical symmetry assumptions common in the literature. Moreover, to handle score functions and responses that are heavy-tailed, our estimators are constructed via carefully thresholding their empirical counterparts. We show that our estimator achieves near-optimal statistical rate of convergence in several settings. We supplement our theoretical results via simulation experiments that confirm the theory.

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