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Minimax-Optimal Hypothesis Testing With Estimation-Dependent Costs

机译:基于估计的成本的极小极大最优假设检验

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摘要

This paper introduces a novel framework for hypothesis testing in the presence of unknown parameters. The objective is to decide between two hypotheses, where each one involves unknown parameters that are of interest to be estimated. The existing approaches on detection and estimation place the primary emphasis on the detection part by solving this part optimally and treating the estimation part suboptimally. The proposed framework, in contrast, treats both problems simultaneously and in a jointly optimal manner. The resulting test exhibits the flexibility to strike any desired balance between the detection and estimation accuracies. By exploiting this flexibility, depending on the application in hand, this new technique offers the freedom to put different emphasis on the detection and estimation subproblems. The proposed optimal joint detection and estimation framework is also extended to multiple hypothesis tests. We apply the proposed test to the problem of detecting and estimating periodicities in DNA sequences and demonstrate the advantages of the new framework compared to the classical Neyman-Pearson approach and the GLRT.
机译:本文介绍了一种在未知参数存在下进行假设检验的新颖框架。目的是在两个假设之间做出决定,其中每个假设都涉及未知的参数,需要进行估计。现有的检测和估计方法主要将重点放在检测部分上,方法是最优地解决该部分并次优地处理估计部分。相反,所提出的框架以共同最优的方式同时处理两个问题。最终的测试具有灵活性,可以在检测和估计精度之间取得任何所需的平衡。通过利用这种灵活性,取决于手头的应用程序,这项新技术提供了自由地将不同的重点放在检测和估计子问题上。所提出的最佳联合检测和估计框架还扩展到多个假设检验。我们将提出的测试应用于检测和估计DNA序列中的周期性的问题,并证明了与经典的Neyman-Pearson方法和GLRT相比,新框架的优势。

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