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Asymptotically optimal classification for multiple tests with empirically observed statistics

机译:具有经验观察统计量的多重检验的渐近最优分类

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摘要

The decision problem of testing M hypotheses when the source is Kth-order Markov and there are M (or fewer) training sequences of length N and a single test sequence of length n is considered. K, M, n, N are all given. It is shown what the requirements are on M, n, N to achieve vanishing (exponential) error probabilities and how to determine or bound the exponent. A likelihood ratio test that is allowed to produce a no-match decision is shown to provide asymptotically optimal error probabilities and minimum no-match decisions. As an important serial case, the binary hypotheses problem without rejection is discussed. It is shown that, for this configuration, only one training sequence is needed to achieve an asymptotically optimal test.
机译:当源是K阶马尔可夫并且有M个(或更少)长度为N的训练序列且长度为n的单个测试序列时,测试M个假设的决策问题。 K,M,n,N均已给出。它显示了对达到消失(指数)错误概率的M,n,N要求,以及如何确定或限制指数。允许进行不匹配决策的似然比检验显示出渐近最佳错误概率和最小不匹配决策。作为一个重要的连续案例,讨论了不拒绝的二元假设问题。结果表明,对于这种配置,只需要一个训练序列就可以实现渐近最优测试。

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