Boolean Compressed Sensing and Noisy Group Testing
George Kamal Atia, Venkatesh Saligrama

TL;DR
This paper introduces an information-theoretic framework for group testing, deriving tight bounds on the number of tests needed under noisy conditions, applicable to compressive sensing models.
Contribution
It formulates group testing as a channel coding problem, providing single-letter characterizations and tight bounds for noisy scenarios, extending to other compressive sensing models.
Findings
Number of tests scales as O(K log N)/(1-q) under Bernoulli noise
Dilution effects increase required tests to O(K log N)/(1-u)^2
Bounds recover known noiseless and approximate reconstruction results
Abstract
The fundamental task of group testing is to recover a small distinguished subset of items from a large population while efficiently reducing the total number of tests (measurements). The key contribution of this paper is in adopting a new information-theoretic perspective on group testing problems. We formulate the group testing problem as a channel coding/decoding problem and derive a single-letter characterization for the total number of tests used to identify the defective set. Although the focus of this paper is primarily on group testing, our main result is generally applicable to other compressive sensing models. The single letter characterization is shown to be order-wise tight for many interesting noisy group testing scenarios. Specifically, we consider an additive Bernoulli() noise model where we show that, for items and defectives, the number of tests is…
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