Temporal-spatial model via Trend Filtering

This research focuses on the estimation of a non-parametric regression function designed for data with simultaneous time and space dependencies. In such a context, we study the Trend Filtering, a nonparametric estimator introduced by <cit.> and <cit.>. For univariate settings, the signals we consider are assumed to have a kth weak derivative with bounded total variation, allowing for a general degree of smoothness. In the multivariate scenario, we study a K-Nearest Neighbor fused lasso estimator as in <cit.>, employing an ADMM algorithm, suitable for signals with bounded variation that adhere to a piecewise Lipschitz continuity criterion. By aligning with lower bounds, the minimax optimality of our estimators is validated. A unique phase transition phenomenon, previously uncharted in Trend Filtering studies, emerges through our analysis. Both Simulation studies and real data applications underscore the superior performance of our method when compared with established techniques in the existing literature.

READ FULL TEXT

page 20

page 21

page 38

page 39

page 40

research
02/16/2017

Additive Models with Trend Filtering

We consider additive models built with trend filtering, i.e., additive m...
research
04/10/2013

Adaptive piecewise polynomial estimation via trend filtering

We study trend filtering, a recently proposed tool of Kim et al. [SIAM R...
research
11/26/2019

Adaptive Estimation of Multivariate Piecewise Polynomials and Bounded Variation Functions by Optimal Decision Trees

Proposed by Donoho (1997), Dyadic CART is a nonparametric regression met...
research
07/15/2020

Adaptive Quantile Trend Filtering

We study quantile trend filtering, a recently proposed method for one-di...
research
05/18/2018

Graphon estimation via nearest neighbor algorithm and 2D fused lasso denoising

We propose a class of methods for graphon estimation based on exploiting...
research
01/10/2020

Trend Filtering – II. Denoising Astronomical Signals with Varying Degrees of Smoothness

Trend filtering—first introduced into the astronomical literature in Pap...

Please sign up or login with your details

Forgot password? Click here to reset