Near optimal efficient decoding from pooled data

08/09/2021
by   Max Hahn-Klimroth, et al.
0

The objective of the pooled data problem is to design a measurement matrix A that allows to recover a signal ∈0, 1, 2, …, d^n from the observation of the vector = A of joint linear measurements of its components as well as from A itself, using as few measurements as possible. It is both a generalisation of the compelling quantitative group testing problem as well as a special case of the extensively studied compressed sensing problem. If the signal vector is sparse, that is, its number k of non-zero components is much smaller than n, it is known that exponential-time constructions to recover from the pair (A, ) with no more than O(k) measurements exist. However, so far, all known efficient constructions required at least Ω(kln n) measurements, and it was an open question whether this gap is artificial or of a fundamental nature. In this article we show that indeed, the previous gap between the information-theoretic and computational bounds is not inherent to the problem by providing an efficient recovery algorithm that succeeds with high probability and employs no more than O(k) measurements.

READ FULL TEXT
research
06/15/2020

Combinatorial Group Testing and Sparse Recovery Schemes with Near-Optimal Decoding Time

In the long-studied problem of combinatorial group testing, one is asked...
research
06/26/2013

Near-Optimal Adaptive Compressed Sensing

This paper proposes a simple adaptive sensing and group testing algorith...
research
06/10/2021

Support Recovery of Sparse Signals from a Mixture of Linear Measurements

Recovery of support of a sparse vector from simple measurements is a wid...
research
07/23/2018

Batch Sparse Recovery, or How to Leverage the Average Sparsity

We introduce a batch version of sparse recovery, where the goal is to re...
research
09/15/2012

Recovering Block-structured Activations Using Compressive Measurements

We consider the problems of detection and localization of a contiguous b...
research
05/10/2018

Uncertainty relations and information loss for spin-1/2 measurements

We formulate entropic measurements uncertainty relations (MURs) for a sp...
research
10/04/2021

Spiked Covariance Estimation from Modulo-Reduced Measurements

Consider the rank-1 spiked model: X=√(ν)ξu+ Z, where ν is the spike inte...

Please sign up or login with your details

Forgot password? Click here to reset