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Generalized Conditional Maximum Likelihood Estimators in the Large Sample Regime

机译:大样本条件下的广义条件最大似然估计

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In modern array processing or spectral analysis, mostly two different signal models are considered: the conditional signal model (CSM) and the unconditional signal model. The discussed signal models are Gaussian and the signal sources parameters are connected either with the expectation value in the conditional case or with the covariance matrix in the unconditional one. We focus on the CSM resulting from several observations of partially coherent signal sources whose amplitudes undergo a Gaussian random walk between observations. In the proposed generalized CSM, the signal sources parameters become connected with both the expectation value and the covariance matrix. Even though an analytical expression of the associated generalized conditional maximum likelihood estimators (GCM-LEs) can be easily exhibited, it does not allow computation of GCMLEs in the large sample regime. As a main contribution, we introduce a recursive form of the GCMLEs which allows their computation whatever the number of observations combined. This recursive form paves the way to assess the effect of partially coherent amplitudes on GCMLEs mean-squared error in the large sample regime. Interestingly, we exhibit non consistent GMLEs in the large sample regime.
机译:在现代阵列处理或频谱分析中,通常考虑两种不同的信号模型:条件信号模型(CSM)和无条件信号模型。所讨论的信号模型是高斯模型,并且在有条件的情况下,信号源参数与期望值相关;在无条件的情况下,信号源参数与协方差矩阵相关。我们将重点放在CSM上,该CSM是由部分相干信号源的若干观测结果产生的,这些信号源的振幅在观测值之间经历高斯随机游动。在提出的广义CSM中,信号源参数与期望值和协方差矩阵都相关。即使可以轻松显示关联的广义条件最大似然估计器(GCM-LE)的分析表达式,它也不允许在大样本方案中计算GCMLE。作为主要贡献,我们介绍了GCMLE的递归形式,无论观察数量多少,GCMLE都可以对其进行计算。这种递归形式为评估大样本方案中部分相干幅度对GCMLE均方误差的影响铺平了道路。有趣的是,我们在大样本方案中表现出不一致的GMLE。

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