Multivariate Trend Filtering for Lattice Data
Veeranjaneyulu Sadhanala, Yu-Xiang Wang, Addison J. Hu, Ryan J., Tibshirani

TL;DR
This paper introduces Kronecker trend filtering (KTF), a multivariate extension of univariate trend filtering for lattice data, providing theoretical insights and demonstrating its advantages over linear smoothers in high-dimensional settings.
Contribution
It develops a comprehensive theoretical framework for KTF in multiple dimensions, revealing phase transitions and extending the method to off-lattice points with constant-time computation.
Findings
KTF outperforms linear smoothers for heterogeneously smooth functions.
A phase transition at dimension $d=2(k+1)$ affects estimator consistency.
KTF can interpolate off-lattice points efficiently using discrete spline results.
Abstract
We study a multivariate version of trend filtering, called Kronecker trend filtering or KTF, for the case in which the design points form a lattice in dimensions. KTF is a natural extension of univariate trend filtering (Steidl et al., 2006; Kim et al., 2009; Tibshirani, 2014), and is defined by minimizing a penalized least squares problem whose penalty term sums the absolute (higher-order) differences of the parameter to be estimated along each of the coordinate directions. The corresponding penalty operator can be written in terms of Kronecker products of univariate trend filtering penalty operators, hence the name Kronecker trend filtering. Equivalently, one can view KTF in terms of an -penalized basis regression problem where the basis functions are tensor products of falling factorial functions, a piecewise polynomial (discrete spline) basis that underlies univariate…
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