Optimal Decision Rules for Composite Binary Hypothesis Testing under Neyman-Pearson Framework
Optimal Decision Rules for Composite Binary Hypothesis Testing under Neyman-Pearson Framework
The composite binary hypothesis testing problem within the Neyman-Pearson framework is considered. The goal is to maximize the expectation of a nonlinear function of the detection probability, integrated with respect to a given probability measure, subject to a false-alarm constraint. It is shown that each power function can be realized by a generalized Bayes rule that maximizes an integrated rejection probability with respect to a finite signed measure. For a simple null hypothesis and a composite alternative, optimal single-threshold decision rules based on an appropriately weighted likelihood ratio are derived. The analysis is extended to composite null hypotheses, including both average and worst-case false-alarm constraints, resulting in modified optimal threshold rules. Special cases involving exponential family distributions and numerical examples are provided to illustrate the theoretical results.
Yanglei Song、Berkan Dulek、Sinan Gezici
数学
Yanglei Song,Berkan Dulek,Sinan Gezici.Optimal Decision Rules for Composite Binary Hypothesis Testing under Neyman-Pearson Framework[EB/OL].(2025-05-23)[2025-06-04].https://arxiv.org/abs/2505.17851.点此复制
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