Bayram, S.Dulek, B.Gezici, Sinan2018-04-122018-04-1220161070-9908http://hdl.handle.net/11693/36517An optimal decision framework is proposed for joint detection and decoding when the prior information is available with some uncertainty. The proposed framework provides tradeoffs between the average inclusive error probability (computed using estimated prior probabilities) and the worst case inclusive error probability according to the amount of uncertainty while satisfying constraints on the probability of false alarm and the maximum probability of miss-detection. Theoretical results that characterize the structure of the optimal decision rule according to the proposed criterion are obtained. The proposed decision rule reduces to some well-known detectors in the case of perfect prior information or when the constraints on the probabilities of miss-detection and false alarm are relaxed. Numerical examples are provided to illustrate the theoretical results. © 2016 IEEE.EnglishBayesDecodingDetectionNeyman-PearsonJoint detection and decoding in the presence of prior information with uncertaintyArticle10.1109/LSP.2016.2611650