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Reduced Rank Linear Regression and Weighted Low Rank Approximations

机译:降低秩线性回归和加权低秩逼近

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This paper addresses parameter estimation in reduced rank linear regressions. This estimation problem has applications in several subject areas including system identification, sensor array processing, econometrics and statistics. A new estimation procedure, based on instrumental variable principles, is derived and analyzed. The proposed method is designed to handle noise that is both spatially and temporally autocorrelated. An asymptotical analysis shows that the proposed method outperforms previous methods when the noise is temporally correlated and that it is asymptotically efficient otherwise. A numerical study indicates that the performance is significantly improved also for finite sample set sizes. In addition, the Cramer-Rao lower bound (CRB) on unbiased estimator covariance for the data model is derived. A statistical test for rank determination is also developed. An important step in the new algorithm is the weighted low rank approximation (WLRA). As the WLRA lacks a closed form solution in its general form, two new, noniterative and approximate solutions are derived, both of them asymptotically optimal when part of the estimation procedure proposed here. These methods are also interesting in their own right since the WLRA has several applications.
机译:本文讨论了降阶线性回归中的参数估计。此估计问题已在多个主题领域中应用,包括系统识别,传感器阵列处理,计量经济学和统计数据。推导并分析了基于工具变量原理的新估计程序。所提出的方法旨在处理在空间和时间上都自相关的噪声。渐近分析表明,当噪声在时间上相关时,所提出的方法优于以前的方法,否则,它在渐近有效。数值研究表明,对于有限的样本集大小,性能也得到了显着改善。另外,推导了数据模型的无偏估计协方差的Cramer-Rao下界(CRB)。还开发了用于确定等级的统计测试。新算法的重要一步是加权低秩近似(WLRA)。由于WLRA缺乏通用形式的闭式解,因此导出了两个新的非迭代解和近似解,当此处提出的估计程序的一部分时,这两个解都是渐近最优的。这些方法本身也很有趣,因为WLRA有多个应用程序。

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