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      On Minimax Detection of Gaussian Stochastic Sequences and Gaussian Stationary Signals

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          Abstract

          Minimax detection of Gaussian stochastic sequences (signals) with unknown covariance matrices is studied. For a fixed false alarm probability (1-st kind error probability), the performance of the minimax detection is being characterized by the best exponential decay rate of the miss probability (2-nd kind error probability) as the length of the observation interval tends to infinity. Our goal is to find the largest set of covariance matrices such that the minimax robust testing of this set (composite hypothesis) can be replaced with testing of only one specific covariance matrix (simple hypothesis) without any loss in detection characteristics. In this paper, we completely describe this maximal set of covariance matrices. Some corollaries address minimax detection of the Gaussian stochastic signals embedded in the White Gaussian noise and detection of the Gaussian stationary signals.

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          Author and article information

          Journal
          13 April 2021
          Article
          2104.06355
          6fe680a8-9e64-41e7-b278-60709fcf318f

          http://creativecommons.org/licenses/by/4.0/

          History
          Custom metadata
          Preliminary version. Problems of Information Transmission, 2021
          cs.IT math.IT math.ST stat.TH

          Numerical methods,Information systems & theory,Statistics theory
          Numerical methods, Information systems & theory, Statistics theory

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