Adaptive piecewise polynomial estimation via trend filtering

04/10/2013
by   Ryan J. Tibshirani, et al.
0

We study trend filtering, a recently proposed tool of Kim et al. [SIAM Rev. 51 (2009) 339-360] for nonparametric regression. The trend filtering estimate is defined as the minimizer of a penalized least squares criterion, in which the penalty term sums the absolute kth order discrete derivatives over the input points. Perhaps not surprisingly, trend filtering estimates appear to have the structure of kth degree spline functions, with adaptively chosen knot points (we say "appear" here as trend filtering estimates are not really functions over continuous domains, and are only defined over the discrete set of inputs). This brings to mind comparisons to other nonparametric regression tools that also produce adaptive splines; in particular, we compare trend filtering to smoothing splines, which penalize the sum of squared derivatives across input points, and to locally adaptive regression splines [Ann. Statist. 25 (1997) 387-413], which penalize the total variation of the kth derivative. Empirically, we discover that trend filtering estimates adapt to the local level of smoothness much better than smoothing splines, and further, they exhibit a remarkable similarity to locally adaptive regression splines. We also provide theoretical support for these empirical findings; most notably, we prove that (with the right choice of tuning parameter) the trend filtering estimate converges to the true underlying function at the minimax rate for functions whose kth derivative is of bounded variation. This is done via an asymptotic pairing of trend filtering and locally adaptive regression splines, which have already been shown to converge at the minimax rate [Ann. Statist. 25 (1997) 387-413]. At the core of this argument is a new result tying together the fitted values of two lasso problems that share the same outcome vector, but have different predictor matrices.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/16/2017

Additive Models with Trend Filtering

We consider additive models built with trend filtering, i.e., additive m...
research
07/15/2020

Adaptive Quantile Trend Filtering

We study quantile trend filtering, a recently proposed method for one-di...
research
04/06/2021

Locally Adaptive Smoothing for Functional Data

Despite increasing accessibility to function data, effective methods for...
research
08/30/2023

Temporal-spatial model via Trend Filtering

This research focuses on the estimation of a non-parametric regression f...
research
09/19/2022

Exponential Family Trend Filtering on Lattices

Trend filtering is a modern approach to nonparametric regression that is...
research
10/28/2014

Trend Filtering on Graphs

We introduce a family of adaptive estimators on graphs, based on penaliz...
research
01/26/2021

Tensor denoising with trend filtering

We extend the notion of trend filtering to tensors by considering the k^...

Please sign up or login with your details

Forgot password? Click here to reset