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Concentration Inequalities and Confidence Bands for Needlet Density Estimators on Compact Homogeneous Manifolds

Abstract

Let X1,...,XnX_1,...,X_n be a random sample from some unknown probability density ff defined on a compact homogeneous manifold M\mathbf M of dimension d1d \ge 1. Consider a ñeedlet frame' {ϕjη}\{\phi_{j \eta}\} describing a localised projection onto the space of eigenfunctions of the Laplace operator on M\mathbf M with corresponding eigenvalues less than 22j2^{2j}, as constructed in \cite{GP10}. We prove non-asymptotic concentration inequalities for the uniform deviations of the linear needlet density estimator fn(j)f_n(j) obtained from an empirical estimate of the needlet projection ηϕjηfϕjη\sum_\eta \phi_{j \eta} \int f \phi_{j \eta} of ff. We apply these results to construct risk-adaptive estimators and nonasymptotic confidence bands for the unknown density ff. The confidence bands are adaptive over classes of differentiable and H\"{older}-continuous functions on M\mathbf M that attain their H\"{o}lder exponents.

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