Parameter instability regimes for sparse proximal denoising programs

10/29/2018
by   Aaron Berk, et al.
0

Compressed sensing theory explains why Lasso programs recover structured high-dimensional signals with minimax order-optimal error. Yet, the optimal choice of the program's governing parameter is often unknown in practice. It is still unclear how variation of the governing parameter impacts recovery error in compressed sensing, which is otherwise provably stable and robust. We establish a novel notion of instability in Lasso programs when the measurement matrix is identity. This is the proximal denoising setup. We prove asymptotic cusp-like behaviour of the risk as a function of the parameter choice, and illustrate the theory with numerical simulations. For example, a 0.1 underestimate of a Lasso parameter can increase the error significantly; and a 50 that revealing parameter instability regimes of Lasso programs helps to inform a practitioner's choice.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/17/2020

On the best choice of Lasso program given data parameters

Generalized compressed sensing (GCS) is a paradigm in which a structured...
research
05/13/2022

LASSO reloaded: a variational analysis perspective with applications to compressed sensing

This paper provides a variational analysis of the unconstrained formulat...
research
05/05/2021

AdaBoost and robust one-bit compressed sensing

This paper studies binary classification in robust one-bit compressed se...
research
03/05/2022

Distributional Hardness Against Preconditioned Lasso via Erasure-Robust Designs

Sparse linear regression with ill-conditioned Gaussian random designs is...
research
10/30/2014

Two New Approaches to Compressed Sensing Exhibiting Both Robust Sparse Recovery and the Grouping Effect

In this paper we introduce a new optimization formulation for sparse reg...
research
11/02/2018

Dantzig Selector with an Approximately Optimal Denoising Matrix and its Application to Reinforcement Learning

Dantzig Selector (DS) is widely used in compressed sensing and sparse le...
research
04/06/2021

Inferring Network Structures via Signal Lasso

Inferring the connectivity structure of networked systems from data is a...

Please sign up or login with your details

Forgot password? Click here to reset