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首页> 外文期刊>International Journal of Thermophysics >Matched, mismatched, and robust scatter matrix estimation and hypothesis testing in complex t-distributed data
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Matched, mismatched, and robust scatter matrix estimation and hypothesis testing in complex t-distributed data

机译:复杂的t分布数据中的匹配,不匹配且鲁棒的散点矩阵估计和假设检验

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摘要

Scatter matrix estimation and hypothesis testing are fundamental inference problems in a wide variety of signal processing applications. In this paper, we investigate and compare the matched, mismatched, and robust approaches to solve these problems in the context of the complex elliptically symmetric (CES) distributions. The matched approach is when the estimation and detection algorithms are tailored on the correct data distribution, whereas the mismatched approach refers to the case when the scatter matrix estimator and the decision rule are derived under a model assumption that is not correct. The robust approach aims at providing good estimation and detection performance, even if suboptimal, over a large set of possible data models, irrespective of the actual data distribution. Specifically, due to its central importance in both the statistical and engineering applications, we assume for the input data a complex t-distribution. We analyze scatter matrix estimators derived under the three different approaches and compare their mean square error (MSE) with the constrained Cramer-Rao bound (CCRB) and the constrained misspecified Cramer-Rao bound (CMCRB). In addition, the detection performance and false alarm rate (FAR) of the various detection algorithms are compared with that of the clairvoyant optimum detector.
机译:散布矩阵估计和假设测试是各种信号处理应用中的基本推理问题。在本文中,我们研究并比较了匹配,不匹配和鲁棒的方法来解决复杂椭圆对称(CES)分布情况下的这些问题。匹配的方法是根据正确的数据分布量身定制估计和检测算法,而失配的方法是指在不正确的模型假设下推导散布矩阵估计器和决策规则的情况。健壮的方法旨在在大范围的可能数据模型上提供最佳的估计和检测性能,即使是次优的,也不考虑实际的数据分布。具体来说,由于它在统计和工程应用中都非常重要,因此我们假设输入数据具有复杂的t分布。我们分析了在三种不同方法下得出的散点矩阵估计量,并将它们的均方差(MSE)与约束的Cramer-Rao约束(CCRB)和约束的错误指定的Cramer-Rao约束(CMCRB)进行了比较。此外,将各种检测算法的检测性能和误报率(FAR)与千里眼最优检测器进行了比较。

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