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

17 June 2011
Eric Gautier
E. L. Pennec
ArXiv (abs)PDFHTML
Abstract

In the random coefficients binary choice model, a binary variable equals 1 iff an index X⊤βX^\top\betaX⊤β is positive.The vectors XXX and β\betaβ are independent and belong to the sphere Sd−1\mathbb{S}^{d-1}Sd−1 in Rd\mathbb{R}^{d}Rd.We prove lower bounds on the minimax risk for estimation of the density f_βf\_{\beta}f_β over Besov bodies where the loss is a power of the Lp(Sd−1)L^p(\mathbb{S}^{d-1})Lp(Sd−1) norm for 1≤p≤∞1\le p\le \infty1≤p≤∞. 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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