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Bibliographic Details
Main Authors: McMorrow, Daniel, Scarlett, Jonathan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.10374
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author McMorrow, Daniel
Scarlett, Jonathan
author_facet McMorrow, Daniel
Scarlett, Jonathan
contents The group testing problem consists of determining a sparse subset of defective items from within a larger set of items via a series of tests, where each test outcome indicates whether at least one defective item is included in the test. We study the approximate recovery setting, where the recovery criterion of the defective set is relaxed to allow a small number of items to be misclassified. In particular, we consider one-sided approximate recovery criteria, where we allow either only false negative or only false positive misclassifications. Under false negatives only (i.e., finding a subset of defectives), we show that there exists an algorithm matching the optimal threshold of two-sided approximate recovery. Under false positives only (i.e., finding a superset of the defectives), we provide a converse bound showing that the better of two existing algorithms is optimal.
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal Non-Adaptive Group Testing with One-Sided Error Guarantees
McMorrow, Daniel
Scarlett, Jonathan
Information Theory
Statistics Theory
The group testing problem consists of determining a sparse subset of defective items from within a larger set of items via a series of tests, where each test outcome indicates whether at least one defective item is included in the test. We study the approximate recovery setting, where the recovery criterion of the defective set is relaxed to allow a small number of items to be misclassified. In particular, we consider one-sided approximate recovery criteria, where we allow either only false negative or only false positive misclassifications. Under false negatives only (i.e., finding a subset of defectives), we show that there exists an algorithm matching the optimal threshold of two-sided approximate recovery. Under false positives only (i.e., finding a superset of the defectives), we provide a converse bound showing that the better of two existing algorithms is optimal.
title Optimal Non-Adaptive Group Testing with One-Sided Error Guarantees
topic Information Theory
Statistics Theory
url https://arxiv.org/abs/2506.10374