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Optimal Uniform Convergence Rates and Asymptotic Normality for Series Estimators Under Weak Dependence and Weak Conditions

18 December 2014
Xiaohong Chen
T. Christensen
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Abstract

We show that spline and wavelet series regression estimators for weakly dependent regressors attain the optimal uniform (i.e. sup-norm) convergence rate (n/log⁡n)−p/(2p+d)(n/\log n)^{-p/(2p+d)}(n/logn)−p/(2p+d) of Stone (1982), where ddd is the number of regressors and ppp is the smoothness of the regression function. The optimal rate is achieved even for heavy-tailed martingale difference errors with finite (2+(d/p))(2+(d/p))(2+(d/p))th absolute moment for d/p<2d/p<2d/p<2. We also establish the asymptotic normality of t statistics for possibly nonlinear, irregular functionals of the conditional mean function under weak conditions. The results are proved by deriving a new exponential inequality for sums of weakly dependent random matrices, which is of independent interest.

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