Title :
Asymptotic Optimality Theory for Decentralized Sequential Multihypothesis Testing Problems
Author :
Wang, Yan ; Mei, Yajun
Author_Institution :
H. Milton Stewart Sch. of Ind. & Syst. Eng., Georgia Inst. of Technol., Atlanta, GA, USA
Abstract :
The Bayesian formulation of sequentially testing M ≥ 3 hypotheses is studied in the context of a decentralized sensor network system. In such a system, local sensors observe raw observations and send quantized sensor messages to a fusion center which makes a final decision when stopping taking observations. Asymptotically optimal decentralized sequential tests are developed from a class of “two-stage” tests that allows the sensor network system to make a preliminary decision in the first stage and then optimize each local sensor quantizer accordingly in the second stage. It is shown that the optimal local quantizer at each local sensor in the second stage can be defined as a maximin quantizer which turns out to be a randomization of at most M-1 unambiguous likelihood quantizers (ULQ). We first present in detail our results for the system with a single sensor and binary sensor messages, and then extend to more general cases involving any finite alphabet sensor messages, multiple sensors, or composite hypotheses.
Keywords :
Bayes methods; sensor fusion; Bayesian formulation; ULQ; asymptotic optimality theory; asymptotically optimal decentralized sequential test; composite hypotheses; decentralized sensor network system; decentralized sequential multihypothesis testing problem; finite alphabet sensor message; fusion center; multiple sensor; optimal local quantizer; quantized sensor message; sequential detection; unambiguous likelihood quantizer; Bandwidth; Bayesian methods; Cost function; Dynamic programming; Indexes; Switches; Testing; Asymptotic optimality; maximin quantizer; multi hypotheses testing; sequential detection; two-stage tests; unambiguous likelihood quantizer (ULQ);
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2011.2165808