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Adaptive estimation in the nonparametric random coefficients binary choice model by needlet thresholding

Abstract

In the random coefficients binary choice model, a binary variable equals 1 iff an index XβX^\top\beta is positive.The vectors XX and β\beta are independent and belong to the sphere Sd1\mathbb{S}^{d-1} in Rd\mathbb{R}^{d}.We prove lower bounds on the minimax risk for estimation of the density f_βf\_{\beta} over Besov bodies where the loss is a power of the Lp(Sd1)L^p(\mathbb{S}^{d-1}) norm for 1p1\le p\le \infty. We show that a hard thresholding estimator based on a needlet expansion with data-driven thresholds achieves these lower bounds up to logarithmic factors.

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