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Adaptive Risk Bounds in Univariate Total Variation Denoising and Trend Filtering

16 February 2017
Adityanand Guntuboyina
Donovan Lieu
S. Chatterjee
B. Sen
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Abstract

We study trend filtering, a relatively recent method for univariate nonparametric regression. For a given positive integer rrr, the rrr-th order trend filtering estimator is defined as the minimizer of the sum of squared errors when we constrain (or penalize) the sum of the absolute rrr-th order discrete derivatives of the fitted function at the design points. For r=1r=1r=1, the estimator reduces to total variation regularization which has received much attention in the statistics and image processing literature. In this paper, we study the performance of the trend filtering estimator for every positive integer rrr, both in the constrained and penalized forms. Our main results show that in the strong sparsity setting when the underlying function is a (discrete) spline with few "knots", the risk (under the global squared error loss) of the trend filtering estimator (with an appropriate choice of the tuning parameter) achieves the parametric n−1n^{-1}n−1 rate, up to a logarithmic (multiplicative) factor. Our results therefore provide support for the use of trend filtering, for every rrr, in the strong sparsity setting.

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