English

Generalized Group Testing

Information Theory 2022-09-26 v4 math.IT

Abstract

In the problem of classical group testing one aims to identify a small subset (of size dd) diseased individuals/defective items in a large population (of size nn). This process is based on a minimal number of suitably-designed group tests on subsets of items, where the test outcome is positive iff the given test contains at least one defective item. Motivated by physical considerations, we consider a generalized setting that includes as special cases multiple other group-testing-like models in the literature. In our setting, which subsumes as special cases a variety of noiseless and noisy group-testing models in the literature, the test outcome is positive with probability f(x)f(x), where xx is the number of defectives tested in a pool, and f()f(\cdot) is an arbitrary monotonically increasing (stochastic) test function. Our main contributions are as follows. 1. We present a non-adaptive scheme that with probability 1ε1-\varepsilon identifies all defective items. Our scheme requires at most O(H(f)dlog(nε)){\cal O}( H(f) d\log\left(\frac{n}{\varepsilon}\right)) tests, where H(f)H(f) is a suitably defined "sensitivity parameter" of f()f(\cdot), and is never larger than O(d1+o(1)){\cal O}\left(d^{1+o(1)}\right), but may be substantially smaller for many f()f(\cdot). 2. We argue that any non-adaptive group testing scheme needs at least Ω((1ε)h(f)dlog(nd))\Omega \left((1-\varepsilon)h(f) d\log\left(\frac n d\right)\right) tests to ensure reliable recovery. Here h(f)1h(f) \geq 1 is a suitably defined "concentration parameter" of f()f(\cdot). 3. We prove that H(f)h(f)Θ(1)\frac{H(f)}{h(f)}\in\Theta(1) for a variety of sparse-recovery group-testing models in the literature, and H(f)h(f)O(d1+o(1))\frac {H(f)} {h(f)} \in {\cal O}\left(d^{1+o(1)}\right) for any other test function.

Keywords

Cite

@article{arxiv.2102.10256,
  title  = {Generalized Group Testing},
  author = {Xiwei Cheng and Sidharth Jaggi and Qiaoqiao Zhou},
  journal= {arXiv preprint arXiv:2102.10256},
  year   = {2022}
}