Non-adaptive Group Testing: Explicit bounds and novel algorithms
Chun Lam Chan, Sidharth Jaggi, Venkatesh Saligrama, Samar Agnihotri

TL;DR
This paper introduces efficient algorithms for noisy non-adaptive group testing, providing explicit bounds on sample complexity that are close to theoretical limits, and analyzes their performance in various noisy scenarios.
Contribution
It offers novel explicit sample-complexity bounds for three classes of algorithms in noisy group testing, with constants computed and compared to information-theoretic lower bounds.
Findings
Explicit sample complexity bounds derived for all algorithms.
Bounds match information-theoretic limits up to a constant factor.
Algorithms perform near-optimally in noisy testing scenarios.
Abstract
We consider some computationally efficient and provably correct algorithms with near-optimal sample-complexity for the problem of noisy non-adaptive group testing. Group testing involves grouping arbitrary subsets of items into pools. Each pool is then tested to identify the defective items, which are usually assumed to be "sparse". We consider non-adaptive randomly pooling measurements, where pools are selected randomly and independently of the test outcomes. We also consider a model where noisy measurements allow for both some false negative and some false positive test outcomes (and also allow for asymmetric noise, and activation noise). We consider three classes of algorithms for the group testing problem (we call them specifically the "Coupon Collector Algorithm", the "Column Matching Algorithms", and the "LP Decoding Algorithms" -- the last two classes of algorithms (versions of…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
