DocumentCode :
28809
Title :
Non-Adaptive Group Testing: Explicit Bounds and Novel Algorithms
Author :
Chun Lam Chan ; Jaggi, Sidharth ; Saligrama, Venkatesh ; Agnihotri, Samar
Author_Institution :
Chinese Univ. of Hong Kong, Hong Kong, China
Volume :
60
Issue :
5
fYear :
2014
fDate :
May-14
Firstpage :
3019
Lastpage :
3035
Abstract :
We consider some computationally efficient and provably correct algorithms with near-optimal sample complexity for the problem of noisy nonadaptive 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 nonadaptive 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 some of which had been considered before in the literature) were inspired by corresponding algorithms in the compressive sensing literature. The second and third of these algorithms have several flavors, dealing separately with the noiseless and noisy measurement scenarios. Our contribution is novel analysis to derive explicit sample-complexity bounds-with all constants expressly computed-for these algorithms as a function of the desired error probability, the noise parameters, the number of items, and the size of the defective set (or an upper bound on it). We also compare the bounds to information-theoretic lower bounds for sample complexity based on Fano´s inequality and show that the upper and lower bounds are equal up to an explicitly computable universal constant factor (independent of problem parameters).
Keywords :
compressed sensing; decoding; error statistics; Fano inequality; LP decoding algorithms; column matching algorithms; compressive sensing; coupon collector algorithm; error probability; explicit bounds; explicit sample-complexity bounds; false negative test; false positive test; information-theoretic lower bounds; near-optimal sample complexity; noise parameters; noisy measurement; noisy nonadaptive group testing; nonadaptive random pooling measurements; universal constant factor; upper bounds; Algorithm design and analysis; Compressed sensing; Decoding; Noise; Noise measurement; Testing; Vectors; LP-decoding; Non-adaptive group testing; compressive sensing; coupon collector´s problem; noisy measurements;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2014.2310477
Filename :
6763117
Link To Document :
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