Sparse Recovery With Non-Linear Fourier Features

02/12/2020
by   Ayca Ozcelikkale, et al.
0

Random non-linear Fourier features have recently shown remarkable performance in a wide-range of regression and classification applications. Motivated by this success, this article focuses on a sparse non-linear Fourier feature (NFF) model. We provide a characterization of the sufficient number of data points that guarantee perfect recovery of the unknown parameters with high-probability. In particular, we show how the sufficient number of data points depends on the kernel matrix associated with the probability distribution function of the input data. We compare our results with the recoverability bounds for the bounded orthonormal systems and provide examples that illustrate sparse recovery under the NFF model.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/27/2017

The Error Probability of Random Fourier Features is Dimensionality Independent

We show that the error probability of reconstructing kernel matrices fro...
research
05/30/2018

On q-ratio CMSV for sparse recovery

Sparse recovery aims to reconstruct an unknown spare or approximately sp...
research
03/15/2016

On the exact recovery of sparse signals via conic relaxations

In this note we compare two recently proposed semidefinite relaxations f...
research
05/31/2022

Modeling pre-Exascale AMR Parallel I/O Workloads via Proxy Applications

The present work investigates the modeling of pre-exascale input/output ...
research
02/27/2018

Instance Optimal Decoding and the Restricted Isometry Property

In this paper, we study the preservation of information in ill-posed non...
research
02/11/2020

Neural Network Approximation of Graph Fourier Transforms for Sparse Sampling of Networked Flow Dynamics

Infrastructure monitoring is critical for safe operations and sustainabi...
research
06/29/2022

Off-the-grid learning of sparse mixtures from a continuous dictionary

We consider a general non-linear model where the signal is a finite mixt...

Please sign up or login with your details

Forgot password? Click here to reset